This study compared the effectiveness of two positive behavior support interventions, Mystery Motivator and Get 'Em On Task, in decreasing off-task behaviors in fifth grade classrooms. Both interventions were implemented using an alternating treatments design. Results showed that both interventions effectively decreased off-task behavior at the class-wide level compared to baseline. The Mystery Motivator intervention used weekly behavior charts and unknown rewards to motivate on-task behavior as a group contingency. The Get 'Em On Task intervention used a computer program to signal and reward individual students for on-task behavior.
Contextual Influences on the Implementation of a Schoolwide .docxmelvinjrobinson2199
Contextual Influences on the
Implementation of a Schoolwide Intervention
to Promote Students’ Social, Emotional,
and Academic Learning
Yolanda Anyon, Nicole Nicotera, and Christopher A. Veeh
Schoolwide interventions are among the most effective approaches for improving students’
behavioral and academic outcomes. However, researchers have documented consistent chal-
lenges with implementation fidelity and have argued that school social workers should be
engaged in efforts to improve treatment integrity. This study examines contextual influences
on the implementation of a whole-school intervention called Responsive Classroom (RC)
in one urban K–8 public school serving a diverse student body. RC improves social, emo-
tional, literacy, and math outcomes for disadvantaged students with behavior problems by
building on the assets of teachers to intervene with misbehaving students in the classroom
setting or school environment. Yet little is understood regarding the factors that constrain or
enable implementation of RC in noncontrolled research conditions. Results from a mixed-
methods convergent analysis of focus group, observation, and survey data indicate the influ-
ence of the following three contextual factors on implementation fidelity: (1) intervention
characteristics such as compatibility with staff members’ beliefs about behavior change and
management, (2) organizational capacity such as principal and teacher buy-in, and (3) the
intervention support system such as training and technical assistance. Implications for future
school social work research and practice with respect to the implementation of schoolwide
programs are discussed.
KEY WORDS: context; fidelity; implementation; school social work; schoolwide interventions
School social workers are often called on to deliver interventions to improve the behavior of disruptive and off-task students, as these
young people are at greater risk than their peers for
academic and psychosocial problems extending
across the life span ( O’Shaughnessy, Lane, Gresham,
& Beebe-Frankenberger, 2003; Sprague & Hill,
2000). For example, behavior problems in elemen-
tary school are among the strongest predictors of
underachievement, delinquency, and violence later
in life ( Sprague & Hill, 2000). Moreover, low-
income children and adolescents of color are more
likely to be identified by school staff as having be-
havior problems but are less likely to have access to
supports they need to make improvements ( Reyes,
Elias, Parker, & Rosenblatt, 2013). In the larger con-
text of persistent racial and class disparities in aca-
demic achievement, the need for early interventions
among disadvantaged young people is clear ( Reyes
et al., 2013).
Emerging evidence suggests that schoolwide and
teacher-focused interventions are among the most
effective approaches for improving student behav-
ioral outcomes ( Durlak, Weissberg, Dymnicki,
Taylor, & Schellinger, 2011). How.
School districts are in the process of adopting theResponse .docxanhlodge
School districts are in the process of adopting the
Response to Intervention (RTI) approach to identify
and remediate academic and behavioral deficits. As
an integral member of the school behavior team, school
counselors must use data on individual interventions
to contribute to the data-based decision making process
in RTI. This article presents a method and rationale
to use behavioral observations to determine the effica-
cy of focused responsive services. It includes implica-
tions for school counseling practice.
I
n the years since the reauthorization of the
Individuals with Disabilities Education
Improvement Act (IDEA; U.S. Department of
Education, 2004), many school districts have adopt-
ed the Response to Intervention (RTI) approach to
addressing academic and behavioral difficulties as an
alternative to the traditional special education assess-
ment model (Shores, 2009). The passage of IDEA
2004 was noteworthy because it brought about a fun-
damental change in how students may be qualified for
special education services (Buffum, Mattos, & Weber,
2009). Under IDEA 2004, states are no longer
required to pursue the lengthy and controversial
process of identifying a severe discrepancy between
achievement and intellectual ability (Fletcher &
Vaughn, 2009). Instead, educators may use an RTI
process to identify and address learning and behavior
problems as quickly as possible in a child’s education.
Broadly defined, RTI is a school-wide, multi-
tiered approach requiring teachers and support per-
sonnel to implement school-wide, research-based
practices and frequently assess student progress in
two domains, academics and behavior. When a stu-
dent fails to respond to system-wide interventions,
small group or individual interventions are applied
with greater intensity. As members of school inter-
vention and student support teams, school coun-
selors have long contributed to the group of educa-
tors who hear concerns and formulate plans to sup-
port students at risk of school failure. Under IDEA
2004, school counselors, like other team members,
are now required to utilize data to drive this inter-
vention planning process for individual students.
Fortunately, the recent focus on accountability in
the counseling literature has equipped school practi-
tioners with the mindset and skills to collect and ana-
lyze data effectively (Astramovich, Coker, & Hoskins,
2005; Dahir & Stone, 2009; Dimmitt, 2010;
Dimmitt, Carey & Hatch, 2007; Loesch & Ritchie,
2009). In fact, the methods for analyzing school-wide
academic and behavioral indicators and engaging in
data-based decision making have been promoted as a
“new cornerstone of effective school counseling prac-
tice” (Poynton & Carey, 2006, p. 129). However,
fruitful participation in an RTI process at the more
intensive services level will require that school coun-
selors translate these systematic data-based skills to the
individual responsive services level.
The purpose of this article is to intro.
Inclusive Practices in Large Urban Inner-City Schools: School Principal Invol...William Kritsonis
Inclusive Practices in Large Urban Inner-City Schools: School Principal Involvement in Positive Behavior Intervention Programs by Dr. Michael G. Richards, Dr. Evangeline Aguilera, Dr. Elizabeth T. Murakami, Dr. Christine A. Weiland - Published in NATIONAL FORUM JOURNALS (Founded 1982) Dr. William Allan Kritsonis, Editor-in-Chief
Article published in the NATIONAL FORUM OF EDUCATIONAL ADMINISTRATION AND SUPERVISION JOURNAL, 32(4) 2014
International Journal of Choice Theory and Reality Therapy • F.docxnormanibarber20063
International Journal of Choice Theory and Reality Therapy • Fall 2011 • Vol. XXXI, number 1 • 109
ACHIEVEMENT AMONG SECOND GRADE STUDENTS WHO RECEIVED INSTRUCTION
FROM EITHER TEACHERS TRAINED IN CHOICE THEORY/REALITY THERAPY OR
TEACHERS WHO WERE NOT SO TRAINED
Jane V. Hale, Ph.D, Assistant Professor of Counselor Education, Department of Counseling
and Development, Slippery Rock University
Joseph Maola, Ph.D, Professor (retired) of Counselor Education, Department of Counseling,
Psychology, and Special Education, Duquesne University
Abstract
The purpose of this study was to determine if second grade students who were taught by
teachers trained in choice theory/reality therapy (CT/RT) methods had higher achievement
scores in mathematics and reading compared to students who were taught by teachers who
were not trained in CT/RT methods. This study was descriptive in nature and used
retrospective data. The participants (N=83) consisted of second grade students who took
the TerraNova, Multiple Assessments test in April 2008. An analysis of variance (ANOVA)
was conducted to measure the main effect of achievement in mathematics/reading and
CT/RT training status of teachers. A separate ANOVA was utilized to measure the
interaction effect of gender on mathematics/reading achievement and training status of
teachers. No significance was found in both analyses. Based on existing research, there is
substantial support for using CT/RT methods in education to improve the social climate
(Glasser, 2010), which ultimately has a positive effect on achievement (Brookover, Beady,
Flood, Schweitzer, & Wisenbaker, 1977; Haynes, Emmons, & Ben-Avie, 1997; Hoy &
Hannum, 1997; Niehbur & Niehbur, 1999; Rutter & Maughan, 2002). The American School
Counseling Association (ASCA) National Model suggests that school counselors need to be
active in the systemic processes of the school to provide comprehensive services to a large
number of students (ASCA, 2005). Training teachers in CT/RT is an example of an activity
that is consistent with ASCA‘s proposition. Concurrent with other research studies on
teacher trainings, lack of intensity (Jacob & Lefgran, 2004) emerged as an issue. The
teacher training program in this study was only six hours in duration and did not offer
follow-up trainings, or a collective plan to put new knowledge into practice. The findings are
discussed related to current research, limitations, and recommendations for future studies.
_______________________
It is difficult to dispute the fact that measures of achievement are an integral component of
the educational system. Measurement of learning helps students, parents, and teachers to
identify if a student is progressing and gaining knowledge. There are many ways student
learning is measured such as school grades, content of projects, conduct reports, portfolios,
curriculum-relevant tests, and standardized achiev.
Contextual Influences on the Implementation of a Schoolwide .docxmelvinjrobinson2199
Contextual Influences on the
Implementation of a Schoolwide Intervention
to Promote Students’ Social, Emotional,
and Academic Learning
Yolanda Anyon, Nicole Nicotera, and Christopher A. Veeh
Schoolwide interventions are among the most effective approaches for improving students’
behavioral and academic outcomes. However, researchers have documented consistent chal-
lenges with implementation fidelity and have argued that school social workers should be
engaged in efforts to improve treatment integrity. This study examines contextual influences
on the implementation of a whole-school intervention called Responsive Classroom (RC)
in one urban K–8 public school serving a diverse student body. RC improves social, emo-
tional, literacy, and math outcomes for disadvantaged students with behavior problems by
building on the assets of teachers to intervene with misbehaving students in the classroom
setting or school environment. Yet little is understood regarding the factors that constrain or
enable implementation of RC in noncontrolled research conditions. Results from a mixed-
methods convergent analysis of focus group, observation, and survey data indicate the influ-
ence of the following three contextual factors on implementation fidelity: (1) intervention
characteristics such as compatibility with staff members’ beliefs about behavior change and
management, (2) organizational capacity such as principal and teacher buy-in, and (3) the
intervention support system such as training and technical assistance. Implications for future
school social work research and practice with respect to the implementation of schoolwide
programs are discussed.
KEY WORDS: context; fidelity; implementation; school social work; schoolwide interventions
School social workers are often called on to deliver interventions to improve the behavior of disruptive and off-task students, as these
young people are at greater risk than their peers for
academic and psychosocial problems extending
across the life span ( O’Shaughnessy, Lane, Gresham,
& Beebe-Frankenberger, 2003; Sprague & Hill,
2000). For example, behavior problems in elemen-
tary school are among the strongest predictors of
underachievement, delinquency, and violence later
in life ( Sprague & Hill, 2000). Moreover, low-
income children and adolescents of color are more
likely to be identified by school staff as having be-
havior problems but are less likely to have access to
supports they need to make improvements ( Reyes,
Elias, Parker, & Rosenblatt, 2013). In the larger con-
text of persistent racial and class disparities in aca-
demic achievement, the need for early interventions
among disadvantaged young people is clear ( Reyes
et al., 2013).
Emerging evidence suggests that schoolwide and
teacher-focused interventions are among the most
effective approaches for improving student behav-
ioral outcomes ( Durlak, Weissberg, Dymnicki,
Taylor, & Schellinger, 2011). How.
School districts are in the process of adopting theResponse .docxanhlodge
School districts are in the process of adopting the
Response to Intervention (RTI) approach to identify
and remediate academic and behavioral deficits. As
an integral member of the school behavior team, school
counselors must use data on individual interventions
to contribute to the data-based decision making process
in RTI. This article presents a method and rationale
to use behavioral observations to determine the effica-
cy of focused responsive services. It includes implica-
tions for school counseling practice.
I
n the years since the reauthorization of the
Individuals with Disabilities Education
Improvement Act (IDEA; U.S. Department of
Education, 2004), many school districts have adopt-
ed the Response to Intervention (RTI) approach to
addressing academic and behavioral difficulties as an
alternative to the traditional special education assess-
ment model (Shores, 2009). The passage of IDEA
2004 was noteworthy because it brought about a fun-
damental change in how students may be qualified for
special education services (Buffum, Mattos, & Weber,
2009). Under IDEA 2004, states are no longer
required to pursue the lengthy and controversial
process of identifying a severe discrepancy between
achievement and intellectual ability (Fletcher &
Vaughn, 2009). Instead, educators may use an RTI
process to identify and address learning and behavior
problems as quickly as possible in a child’s education.
Broadly defined, RTI is a school-wide, multi-
tiered approach requiring teachers and support per-
sonnel to implement school-wide, research-based
practices and frequently assess student progress in
two domains, academics and behavior. When a stu-
dent fails to respond to system-wide interventions,
small group or individual interventions are applied
with greater intensity. As members of school inter-
vention and student support teams, school coun-
selors have long contributed to the group of educa-
tors who hear concerns and formulate plans to sup-
port students at risk of school failure. Under IDEA
2004, school counselors, like other team members,
are now required to utilize data to drive this inter-
vention planning process for individual students.
Fortunately, the recent focus on accountability in
the counseling literature has equipped school practi-
tioners with the mindset and skills to collect and ana-
lyze data effectively (Astramovich, Coker, & Hoskins,
2005; Dahir & Stone, 2009; Dimmitt, 2010;
Dimmitt, Carey & Hatch, 2007; Loesch & Ritchie,
2009). In fact, the methods for analyzing school-wide
academic and behavioral indicators and engaging in
data-based decision making have been promoted as a
“new cornerstone of effective school counseling prac-
tice” (Poynton & Carey, 2006, p. 129). However,
fruitful participation in an RTI process at the more
intensive services level will require that school coun-
selors translate these systematic data-based skills to the
individual responsive services level.
The purpose of this article is to intro.
Inclusive Practices in Large Urban Inner-City Schools: School Principal Invol...William Kritsonis
Inclusive Practices in Large Urban Inner-City Schools: School Principal Involvement in Positive Behavior Intervention Programs by Dr. Michael G. Richards, Dr. Evangeline Aguilera, Dr. Elizabeth T. Murakami, Dr. Christine A. Weiland - Published in NATIONAL FORUM JOURNALS (Founded 1982) Dr. William Allan Kritsonis, Editor-in-Chief
Article published in the NATIONAL FORUM OF EDUCATIONAL ADMINISTRATION AND SUPERVISION JOURNAL, 32(4) 2014
International Journal of Choice Theory and Reality Therapy • F.docxnormanibarber20063
International Journal of Choice Theory and Reality Therapy • Fall 2011 • Vol. XXXI, number 1 • 109
ACHIEVEMENT AMONG SECOND GRADE STUDENTS WHO RECEIVED INSTRUCTION
FROM EITHER TEACHERS TRAINED IN CHOICE THEORY/REALITY THERAPY OR
TEACHERS WHO WERE NOT SO TRAINED
Jane V. Hale, Ph.D, Assistant Professor of Counselor Education, Department of Counseling
and Development, Slippery Rock University
Joseph Maola, Ph.D, Professor (retired) of Counselor Education, Department of Counseling,
Psychology, and Special Education, Duquesne University
Abstract
The purpose of this study was to determine if second grade students who were taught by
teachers trained in choice theory/reality therapy (CT/RT) methods had higher achievement
scores in mathematics and reading compared to students who were taught by teachers who
were not trained in CT/RT methods. This study was descriptive in nature and used
retrospective data. The participants (N=83) consisted of second grade students who took
the TerraNova, Multiple Assessments test in April 2008. An analysis of variance (ANOVA)
was conducted to measure the main effect of achievement in mathematics/reading and
CT/RT training status of teachers. A separate ANOVA was utilized to measure the
interaction effect of gender on mathematics/reading achievement and training status of
teachers. No significance was found in both analyses. Based on existing research, there is
substantial support for using CT/RT methods in education to improve the social climate
(Glasser, 2010), which ultimately has a positive effect on achievement (Brookover, Beady,
Flood, Schweitzer, & Wisenbaker, 1977; Haynes, Emmons, & Ben-Avie, 1997; Hoy &
Hannum, 1997; Niehbur & Niehbur, 1999; Rutter & Maughan, 2002). The American School
Counseling Association (ASCA) National Model suggests that school counselors need to be
active in the systemic processes of the school to provide comprehensive services to a large
number of students (ASCA, 2005). Training teachers in CT/RT is an example of an activity
that is consistent with ASCA‘s proposition. Concurrent with other research studies on
teacher trainings, lack of intensity (Jacob & Lefgran, 2004) emerged as an issue. The
teacher training program in this study was only six hours in duration and did not offer
follow-up trainings, or a collective plan to put new knowledge into practice. The findings are
discussed related to current research, limitations, and recommendations for future studies.
_______________________
It is difficult to dispute the fact that measures of achievement are an integral component of
the educational system. Measurement of learning helps students, parents, and teachers to
identify if a student is progressing and gaining knowledge. There are many ways student
learning is measured such as school grades, content of projects, conduct reports, portfolios,
curriculum-relevant tests, and standardized achiev.
Bergeron, julie l, implementing a school based mentoring program schooling v1...William Kritsonis
Dr. William Allan Kritsonis, PhD - Editor-in-Chief, NATIONAL FORUM JOURNALS (Established 1982). Dr. Kritsonis earned his PhD from The University of Iowa, Iowa City, Iowa; M.Ed., Seattle Pacific University; Seattle, Washington; BA Central Washington University, Ellensburg, Washington. He was also named as the Distinguished Alumnus for the College of Education and Professional Studies at Central Washington University.
1
Methodology Assignment
Participant/Procedures
The intended participants will include both parents and students. The parents of undergraduate students from a mid-sized university will be included in the study. The parents will consist of both fathers and mothers of students. Parents with students in elementary, junior, and high school levels will be excluded from the study. Undergraduate students who are enrolled in communication studies from a mid-sized university will also be considered as participants for the study. The students will consist of freshmen, sophomores, juniors, and seniors.
The personal demographic questions that the survey will ask the parents include education status, ethnicity, and the level of study of their children as well as their performance record in school. These questions matter because they will enable the research to deduce useful information about the individual parents and their involvement in the education of their children. For instance, the question on their level of education will assess their understanding of the purpose of the study as well as the role of parents in supporting the education initiatives of students. The question on ethnicity will enable the research to determine whether parental involvement or support to children depends on ethnicity. The students will be asked demographic questions such as their age, gender, and level of study. The specific demographic questions for the students will assist in validating the measurement scale. For instance, the level of study will determine the extent of parental support that is needed further validating the measurement scales. The question on gender will expose the difference in perception among male and female students regarding parental support and student satisfaction.
Random sampling will be utilized to collect data. It involves sampling where every object has an equal chance of appearing in the study. This method will be utilized because it produces an unbiased representation of the population which will help in drawing useful conclusions about the study. It will also be utilized due to its simplicity as compared to other sampling techniques. This sampling method will significantly influence the outcomes of the results since it will ensure a higher degree of accuracy and validity.The study will adopt a cross-sectional survey design which will ensure that the researcher examines different samples of a population at a given point in time. It will allow the comparison of results/answers from different samples at one point in time. I will also utilize this survey design because it is generally short and inexpensive. They will also enable me to discover new correlations for the study that can be studied later.
I intend to send the surveys to 300 parents and undergraduate students from a mid-sized university. To increase their response rates, I will provide incentives and I will also keep the survey relevant. Studies show that sometimes when co ...
I have an a reflection assignment on professional issue, what Ive.docxwilcockiris
I have an a reflection assignment on professional issue, what I've learned from it
Reflect on all the material covered (e.g. readings, learning activities, etc.) throughout this module. Explain your thoughts on which learning experiences influenced your perspectives on IT and why. Additionally, explain what achievements you accomplished in this module and explain which learning experiences facilitated that/those accomplishment(s). Lastly, describe how you intend to apply your learning and experiences in this module to other modules in the Information Technology programme and/or your professional work.
The module is called professional issues and all the topics we covered around 8 topics they are and it’s based on professional issues in I.T such as plagiarism, fair use of data, code of ethics, protecting personal information, cloud computing. They are the main that I want to reflect upon.
Issues to Reflect Upon
Plagiarism, fair use of data, code of ethics, protecting personal information, cloud computing
400-500 Words
At least 4 References [In text citations with at least one website source]
Harvard Style
Running Head: POSITIVE REINFORCEMENT 1
POSITIVE AND NEGATIVE REINFORCEMENT 30
Positive Reinforcement
Matthew Rosario
Southern New Hampshire University
Reinforcement
Reinforcement is used to condition a particular behavioral response or action. According to Berger (2014), Reinforcement is a stimulus or event that increases the frequency of response it follows. To increase the frequency of the desired behavior, positive or negative reinforcement must be used. Positive reinforcement works by establishing a motivating stimulus after the desired behavioral response. For example, when a child completes their homework and receives a reward like candy. Negative reinforcement is when a particular stimulus is removed when a particular behavior is displayed. By removing a negative stimulus, it is less likely to occur again. For example, a driver follows the speed limit to avoid receiving a ticket. Keep in mind negative reinforcement is not a punishment because it increases a behavioral response instead of decreasing it.
Integrated Research
The ability to shape appropriate behavior while extinguishing misbehavior is critical to teaching and learning in physical education. The scientific principles that affect student learning in the gymnasium also apply to the methods teachers use to influence social behaviors. Downing and colleagues describe the results of an experiment that examined the ability to shape behavior to student to be teachable. The authors hypothesized that reinforcement, the stimulus is far more effective than the traditional punishment. Positive and negative reinforcement is never to be looked at as a punishment; it is a corrective action to change a specific behavior. The aut.
Eunetra Ellison Simpson, PhD Proposal Defense, Dr. William Allan Kritsonis, D...William Kritsonis
Dr. William Allan Kritsonis, PhD Dissertation Chair for Eunetra Ellison Simpson, PhD Program in Educational Leadership, PVAMU, Member of the Texas A&M University System.
153School Psychology Review2018, Volume 47, No. 2, pp. 1.docxaulasnilda
153
School Psychology Review
2018, Volume 47, No. 2, pp. 153–166
DOI: 10.17105/SPR-2017-0070.V47-2
Examining How Proactive Management and Culturally
Responsive Teaching Relate to Student Behavior:
Implications for Measurement and Practice
Kristine E. Larson
Elise T. Pas
Johns Hopkins University
Catherine P. Bradshaw
University of Virginia
Michael S. Rosenberg
State University of New York–New Paltz
Norma L. Day-Vines
Johns Hopkins University
Abstract. The discipline gap between White students and African American students has increased demand for
teacher training in culturally responsive and behavior management practices. Extant research, however, is incon-
clusive about how culturally responsive teaching practices relate to student behavior or how to assess using such
practices in the classroom. Identifying proactive behavior management and culturally responsive teaching practices
that are associated with positive student behavior may inform teacher training and bolster efforts to reduce dispar-
ities in behavioral and academic performance. The current study examined the association between student behav-
iors and the observed use of and teacher self-reported efficacy in using culturally responsive teaching and proactive
behavior management practices. Data were collected from 274 teachers in 18 schools. Structural equation modeling
indicated a statistically significant association between observations of culturally responsive teaching and proactive
behavior management practices, with observed positive student behaviors in classrooms. Implications for mea-
surement and practice are discussed.
Keywords: Positive Behavior Support, School Discipline, Teachers, Prevention, Structural Equation Modeling
Even after decades of research, African American stu-
dents continue to be disproportionally represented in exclusion-
ary disciplinary actions such as office referrals, suspensions,
expulsions, and referrals to the office and school counselors for
disruptive behavior (Bryan, Day-Vines, Griffin, & Moore-
Thomas, 2012; Gregory, Skiba, & Noguera, 2010; Noltemeyer
& Mcloughlin, 2010; Vincent, Sprague, & Tobin, 2012;
Wallace, Goodkind, Wallace, & Bachman, 2008).
Disproportionality refers to a phenomenon whereby students,
relative to their proportion in the population, experience over-
representation or underrepresentation along a specific data
point (Bryan et al., 2012). Of particular concern is the overrep-
resentation of African American students in discipline data, as
research suggests they are three times as likely to get suspended
Author Note. We thank Katrina Debnam, Jessika Bottiani, Sandra Hardee, and Lana Bates for their assistance in developing the Double
Check framework. Additionally, we thank Laurie deBettencourt for her feedback on earlier drafts of this paper. Support for this project was
provided by grants from the Institute of Education Sciences (R305A150221 and R324A110107) and the Spencer Foundation, aw ...
EFFECTIVENESS OF COOPERATIVE LEARNING IN SECONDARY SOCIAL STUDIES OF DEPARTME...AJHSSR Journal
ABSTRACT: This study assessed the effectiveness of the utilization of Cooperative Learning (CL) in
Secondary Social Studies instruction, in Zone 2, Department of Education, Division of Zambalesduring the 3rd
quarter of the school year 2018-2019. A descriptive research design and survey questionnaire were the main
data-gathering instruments.The researcher concluded that the teacher-respondents are female, in their early
adulthood, specializing in Social Studies, Teacher I, holders of Bachelor Degrees with Master’s units, quite new
in the teaching profession and have attended few seminars.The level of performance of high school students in
Social Studies using Cooperative Learning Methods and Activities improved from Pre-Test which is
Approaching Proficiency to Proficient in the Post Test, increased chances for students’ conflict, noise and
limited techniques in maintaining students’ motivation were the challenges sometimes encountered when
cooperative learning was utilized in teaching Social Studies lesson and contents.There is a significant difference
in the perceived effectiveness of cooperative learning to students of the elements of Individual Accountability,
Small Group and Interpersonal Skills, and Group Processing when attributed to teachers’ age. There are no
significant differences in the perceived effectiveness of cooperative learning to students for Face to Face
Interaction when attributed to teachers’ profile and the perception of the extent of occurrence of
problems/challenges in the utilization of cooperative learning when grouped according to teachers’ profile
variables, and there is a highly significant difference on the result of pre-test and a post-test score of the high
school students in Social Studies using cooperative learning method and learning activities was established.
Teachers may plan ahead cooperative learning activities and tasks in which students work together on specific
roles and materials (Positive Interdependence); learn how to strengthen communication skills (Individual
Accountability); encourage each other to learn and perform the task (Face to Face Interaction); develop more
sensitivity and appreciate with others (Small Group and Interpersonal Skills), and reflect on the feedback they
receive (Group Processing).
KEYWORDS: Cooperative Learning, Positive Interdependence, Individual Accountability, Promotive
Interaction, Small Group, and Interpersonal Skills, Group Processing
Bergeron, julie l, implementing a school based mentoring program schooling v1...William Kritsonis
Dr. William Allan Kritsonis, PhD - Editor-in-Chief, NATIONAL FORUM JOURNALS (Established 1982). Dr. Kritsonis earned his PhD from The University of Iowa, Iowa City, Iowa; M.Ed., Seattle Pacific University; Seattle, Washington; BA Central Washington University, Ellensburg, Washington. He was also named as the Distinguished Alumnus for the College of Education and Professional Studies at Central Washington University.
1
Methodology Assignment
Participant/Procedures
The intended participants will include both parents and students. The parents of undergraduate students from a mid-sized university will be included in the study. The parents will consist of both fathers and mothers of students. Parents with students in elementary, junior, and high school levels will be excluded from the study. Undergraduate students who are enrolled in communication studies from a mid-sized university will also be considered as participants for the study. The students will consist of freshmen, sophomores, juniors, and seniors.
The personal demographic questions that the survey will ask the parents include education status, ethnicity, and the level of study of their children as well as their performance record in school. These questions matter because they will enable the research to deduce useful information about the individual parents and their involvement in the education of their children. For instance, the question on their level of education will assess their understanding of the purpose of the study as well as the role of parents in supporting the education initiatives of students. The question on ethnicity will enable the research to determine whether parental involvement or support to children depends on ethnicity. The students will be asked demographic questions such as their age, gender, and level of study. The specific demographic questions for the students will assist in validating the measurement scale. For instance, the level of study will determine the extent of parental support that is needed further validating the measurement scales. The question on gender will expose the difference in perception among male and female students regarding parental support and student satisfaction.
Random sampling will be utilized to collect data. It involves sampling where every object has an equal chance of appearing in the study. This method will be utilized because it produces an unbiased representation of the population which will help in drawing useful conclusions about the study. It will also be utilized due to its simplicity as compared to other sampling techniques. This sampling method will significantly influence the outcomes of the results since it will ensure a higher degree of accuracy and validity.The study will adopt a cross-sectional survey design which will ensure that the researcher examines different samples of a population at a given point in time. It will allow the comparison of results/answers from different samples at one point in time. I will also utilize this survey design because it is generally short and inexpensive. They will also enable me to discover new correlations for the study that can be studied later.
I intend to send the surveys to 300 parents and undergraduate students from a mid-sized university. To increase their response rates, I will provide incentives and I will also keep the survey relevant. Studies show that sometimes when co ...
I have an a reflection assignment on professional issue, what Ive.docxwilcockiris
I have an a reflection assignment on professional issue, what I've learned from it
Reflect on all the material covered (e.g. readings, learning activities, etc.) throughout this module. Explain your thoughts on which learning experiences influenced your perspectives on IT and why. Additionally, explain what achievements you accomplished in this module and explain which learning experiences facilitated that/those accomplishment(s). Lastly, describe how you intend to apply your learning and experiences in this module to other modules in the Information Technology programme and/or your professional work.
The module is called professional issues and all the topics we covered around 8 topics they are and it’s based on professional issues in I.T such as plagiarism, fair use of data, code of ethics, protecting personal information, cloud computing. They are the main that I want to reflect upon.
Issues to Reflect Upon
Plagiarism, fair use of data, code of ethics, protecting personal information, cloud computing
400-500 Words
At least 4 References [In text citations with at least one website source]
Harvard Style
Running Head: POSITIVE REINFORCEMENT 1
POSITIVE AND NEGATIVE REINFORCEMENT 30
Positive Reinforcement
Matthew Rosario
Southern New Hampshire University
Reinforcement
Reinforcement is used to condition a particular behavioral response or action. According to Berger (2014), Reinforcement is a stimulus or event that increases the frequency of response it follows. To increase the frequency of the desired behavior, positive or negative reinforcement must be used. Positive reinforcement works by establishing a motivating stimulus after the desired behavioral response. For example, when a child completes their homework and receives a reward like candy. Negative reinforcement is when a particular stimulus is removed when a particular behavior is displayed. By removing a negative stimulus, it is less likely to occur again. For example, a driver follows the speed limit to avoid receiving a ticket. Keep in mind negative reinforcement is not a punishment because it increases a behavioral response instead of decreasing it.
Integrated Research
The ability to shape appropriate behavior while extinguishing misbehavior is critical to teaching and learning in physical education. The scientific principles that affect student learning in the gymnasium also apply to the methods teachers use to influence social behaviors. Downing and colleagues describe the results of an experiment that examined the ability to shape behavior to student to be teachable. The authors hypothesized that reinforcement, the stimulus is far more effective than the traditional punishment. Positive and negative reinforcement is never to be looked at as a punishment; it is a corrective action to change a specific behavior. The aut.
Eunetra Ellison Simpson, PhD Proposal Defense, Dr. William Allan Kritsonis, D...William Kritsonis
Dr. William Allan Kritsonis, PhD Dissertation Chair for Eunetra Ellison Simpson, PhD Program in Educational Leadership, PVAMU, Member of the Texas A&M University System.
153School Psychology Review2018, Volume 47, No. 2, pp. 1.docxaulasnilda
153
School Psychology Review
2018, Volume 47, No. 2, pp. 153–166
DOI: 10.17105/SPR-2017-0070.V47-2
Examining How Proactive Management and Culturally
Responsive Teaching Relate to Student Behavior:
Implications for Measurement and Practice
Kristine E. Larson
Elise T. Pas
Johns Hopkins University
Catherine P. Bradshaw
University of Virginia
Michael S. Rosenberg
State University of New York–New Paltz
Norma L. Day-Vines
Johns Hopkins University
Abstract. The discipline gap between White students and African American students has increased demand for
teacher training in culturally responsive and behavior management practices. Extant research, however, is incon-
clusive about how culturally responsive teaching practices relate to student behavior or how to assess using such
practices in the classroom. Identifying proactive behavior management and culturally responsive teaching practices
that are associated with positive student behavior may inform teacher training and bolster efforts to reduce dispar-
ities in behavioral and academic performance. The current study examined the association between student behav-
iors and the observed use of and teacher self-reported efficacy in using culturally responsive teaching and proactive
behavior management practices. Data were collected from 274 teachers in 18 schools. Structural equation modeling
indicated a statistically significant association between observations of culturally responsive teaching and proactive
behavior management practices, with observed positive student behaviors in classrooms. Implications for mea-
surement and practice are discussed.
Keywords: Positive Behavior Support, School Discipline, Teachers, Prevention, Structural Equation Modeling
Even after decades of research, African American stu-
dents continue to be disproportionally represented in exclusion-
ary disciplinary actions such as office referrals, suspensions,
expulsions, and referrals to the office and school counselors for
disruptive behavior (Bryan, Day-Vines, Griffin, & Moore-
Thomas, 2012; Gregory, Skiba, & Noguera, 2010; Noltemeyer
& Mcloughlin, 2010; Vincent, Sprague, & Tobin, 2012;
Wallace, Goodkind, Wallace, & Bachman, 2008).
Disproportionality refers to a phenomenon whereby students,
relative to their proportion in the population, experience over-
representation or underrepresentation along a specific data
point (Bryan et al., 2012). Of particular concern is the overrep-
resentation of African American students in discipline data, as
research suggests they are three times as likely to get suspended
Author Note. We thank Katrina Debnam, Jessika Bottiani, Sandra Hardee, and Lana Bates for their assistance in developing the Double
Check framework. Additionally, we thank Laurie deBettencourt for her feedback on earlier drafts of this paper. Support for this project was
provided by grants from the Institute of Education Sciences (R305A150221 and R324A110107) and the Spencer Foundation, aw ...
EFFECTIVENESS OF COOPERATIVE LEARNING IN SECONDARY SOCIAL STUDIES OF DEPARTME...AJHSSR Journal
ABSTRACT: This study assessed the effectiveness of the utilization of Cooperative Learning (CL) in
Secondary Social Studies instruction, in Zone 2, Department of Education, Division of Zambalesduring the 3rd
quarter of the school year 2018-2019. A descriptive research design and survey questionnaire were the main
data-gathering instruments.The researcher concluded that the teacher-respondents are female, in their early
adulthood, specializing in Social Studies, Teacher I, holders of Bachelor Degrees with Master’s units, quite new
in the teaching profession and have attended few seminars.The level of performance of high school students in
Social Studies using Cooperative Learning Methods and Activities improved from Pre-Test which is
Approaching Proficiency to Proficient in the Post Test, increased chances for students’ conflict, noise and
limited techniques in maintaining students’ motivation were the challenges sometimes encountered when
cooperative learning was utilized in teaching Social Studies lesson and contents.There is a significant difference
in the perceived effectiveness of cooperative learning to students of the elements of Individual Accountability,
Small Group and Interpersonal Skills, and Group Processing when attributed to teachers’ age. There are no
significant differences in the perceived effectiveness of cooperative learning to students for Face to Face
Interaction when attributed to teachers’ profile and the perception of the extent of occurrence of
problems/challenges in the utilization of cooperative learning when grouped according to teachers’ profile
variables, and there is a highly significant difference on the result of pre-test and a post-test score of the high
school students in Social Studies using cooperative learning method and learning activities was established.
Teachers may plan ahead cooperative learning activities and tasks in which students work together on specific
roles and materials (Positive Interdependence); learn how to strengthen communication skills (Individual
Accountability); encourage each other to learn and perform the task (Face to Face Interaction); develop more
sensitivity and appreciate with others (Small Group and Interpersonal Skills), and reflect on the feedback they
receive (Group Processing).
KEYWORDS: Cooperative Learning, Positive Interdependence, Individual Accountability, Promotive
Interaction, Small Group, and Interpersonal Skills, Group Processing
Model Attribute Check Company Auto PropertyCeline George
In Odoo, the multi-company feature allows you to manage multiple companies within a single Odoo database instance. Each company can have its own configurations while still sharing common resources such as products, customers, and suppliers.
Palestine last event orientationfvgnh .pptxRaedMohamed3
An EFL lesson about the current events in Palestine. It is intended to be for intermediate students who wish to increase their listening skills through a short lesson in power point.
Synthetic Fiber Construction in lab .pptxPavel ( NSTU)
Synthetic fiber production is a fascinating and complex field that blends chemistry, engineering, and environmental science. By understanding these aspects, students can gain a comprehensive view of synthetic fiber production, its impact on society and the environment, and the potential for future innovations. Synthetic fibers play a crucial role in modern society, impacting various aspects of daily life, industry, and the environment. ynthetic fibers are integral to modern life, offering a range of benefits from cost-effectiveness and versatility to innovative applications and performance characteristics. While they pose environmental challenges, ongoing research and development aim to create more sustainable and eco-friendly alternatives. Understanding the importance of synthetic fibers helps in appreciating their role in the economy, industry, and daily life, while also emphasizing the need for sustainable practices and innovation.
Ethnobotany and Ethnopharmacology:
Ethnobotany in herbal drug evaluation,
Impact of Ethnobotany in traditional medicine,
New development in herbals,
Bio-prospecting tools for drug discovery,
Role of Ethnopharmacology in drug evaluation,
Reverse Pharmacology.
How to Make a Field invisible in Odoo 17Celine George
It is possible to hide or invisible some fields in odoo. Commonly using “invisible” attribute in the field definition to invisible the fields. This slide will show how to make a field invisible in odoo 17.
Operation “Blue Star” is the only event in the history of Independent India where the state went into war with its own people. Even after about 40 years it is not clear if it was culmination of states anger over people of the region, a political game of power or start of dictatorial chapter in the democratic setup.
The people of Punjab felt alienated from main stream due to denial of their just demands during a long democratic struggle since independence. As it happen all over the word, it led to militant struggle with great loss of lives of military, police and civilian personnel. Killing of Indira Gandhi and massacre of innocent Sikhs in Delhi and other India cities was also associated with this movement.
The Art Pastor's Guide to Sabbath | Steve ThomasonSteve Thomason
What is the purpose of the Sabbath Law in the Torah. It is interesting to compare how the context of the law shifts from Exodus to Deuteronomy. Who gets to rest, and why?
Instructions for Submissions thorugh G- Classroom.pptxJheel Barad
This presentation provides a briefing on how to upload submissions and documents in Google Classroom. It was prepared as part of an orientation for new Sainik School in-service teacher trainees. As a training officer, my goal is to ensure that you are comfortable and proficient with this essential tool for managing assignments and fostering student engagement.
Unit 8 - Information and Communication Technology (Paper I).pdfThiyagu K
This slides describes the basic concepts of ICT, basics of Email, Emerging Technology and Digital Initiatives in Education. This presentations aligns with the UGC Paper I syllabus.
ESC Beyond Borders _From EU to You_ InfoPack general.pdf
A Comparison Of The Mystery Motivator And The Get Em On Task Interventions For Off-Task Behaviors
1. Psychology in the Schools, Vol. 49(2), 2012 C
2012 Wiley Periodicals, Inc.
View this article online at wileyonlinelibrary.com/journal/pits DOI: 10.1002/pits.20627
A COMPARISON OF THE MYSTERY MOTIVATOR AND THE GET ‘EM ON TASK
INTERVENTIONS FOR OFF-TASK BEHAVIORS
ELISABETH E. KRAEMER, SUSAN C. DAVIES, KELLI JO ARNDT, AND SAWYER HUNLEY
University of Dayton
Attending to instruction is a critical behavior for academic success. Many elementary school teach-
ers, however, identify disruptive and inattentive classroom behaviors as key barriers to students’
successful educational performance. This study examined the impact of two class-wide positive
behavior support programs. The Mystery Motivator and Get ‘Em On Task interventions were im-
plemented in an alternating treatments design with fifth grade participants to decrease off-task
behaviors. Results indicated that both interventions effectively decreased off-task behavior at the
class-wide level. Implications and suggestions for future research on evidence-based behavioral
interventions are discussed. C
2012 Wiley Periodicals, Inc.
A COMPARISON OF THE MYSTERY MOTIVATOR AND THE Get ‘Em On Task
INTERVENTIONS FOR OFF-TASK BEHAVIORS
Disruptive behaviors are among the most prevalent behavior problems in childhood, accounting
for one half to one third of all referrals to child mental health settings (McMahon Estes, 1997).
Within the classroom, disruptive behaviors impact the learning process, reduce instruction time, and
make it more difficult for students to succeed academically (Luiselli, Putnam, Sunderland, 2002).
Positive Behavior Support (PBS) is a system to help parents and school staff members create and
maintain a safe, supportive learning environment. PBS practices and strategies are organized and
conceptualized to meet the needs of students with a vast range of behavioral challenges. To respond to
the challenges, PBS relies on a continuum of behavior supports based on implementing interventions
with differing specificities. The PBS model is a three-tiered system that focuses on school-wide
(Tier 1, or “primary”), classroom or small group (Tier 2, or “secondary”), and individual (Tier 3, or
“tertiary”) supports. The following study examines the efficacy of two Tier 2 behavior intervention
programs, The Mystery Motivator and Get ‘Em On Task.
PBS
Throughout the United States, schools and entire school districts are implementing PBS to im-
prove school-wide discipline (Hagan-Burke et al., 2005). Many schools implementing this approach
have reported a 20% to 60% reduction in office discipline referrals, as well as improved social
climate and academic gains (Cushing, 2000). PBS is based on the principles of applied behavioral
analysis (Safran Oswald, 2003).
The goal of PBS is to “apply behavioral principles in the community in order to reduce
problem behaviors and build appropriate behaviors that result in durable change and a rich lifestyle”
(Carr et al., 1999, p. 3). PBS initially evolved within the field of developmental disabilities and
emerged from three major sources including applied behavior analysis, the normalization/inclusion
movements, and person-centered values (Carr et al., 2002). We can also view PBS as rooted in
ecological theory. Bronfenbrenner (1979) viewed the relationships between individuals and their
environments as “mutually shaping” and saw the individual’s experience “as a set of nested structures,
each inside the next, like a set of Russian dolls” (Bronfenbrenner, 1979, p. 22). Bronfenbrenner’s
Correspondence to: Susan C. Davies, Department of Counselor Education and Human Services, 300 College
Park, University of Dayton, Dayton, OH 45469-0530. E-mail: sdavies1@notes.udayton.edu
163
2. 164 Kraemer et al.
theory examines how several systems interact (e.g., family, workplace, and economy); therefore, the
study of PBS is a logical extension of his investigations. The theory is useful in helping educators
understand how systems within the child’s educational environment can interact to positively impact
his or her ability to access resources across the school system.
The Individuals with Disabilities Education Act (IDEA) of 1997, and its subsequent revision
in 2004, requires that local education agencies use PBS not only for students identified for special
education, but also for those whose problem behavior puts them at risk for special education
placements (IDEA, 2004). Thus, research is needed to identify strategies that are effective at different
levels of need. Typically, PBS is directed at three different levels of support: (a) primary (e.g., school-
wide), (b) secondary (e.g., classroom or small group), and (c) tertiary (e.g., individual) (Walker
Shin, 2002).
School-wide interventions focus on all students in all school settings, and typically all staff
members are involved in the implementation (Hagan-Burke et al., 2005). Turnbull and colleagues
(2002) conducted a study in an urban middle school in Kansas City to show the effects of imple-
menting a PBS. All staff members worked together to implement universal supports across all school
settings for all students by using and teaching clearly defined expectations. Data were systematically
collected to monitor progress toward the reduction of problem behavior as indicated by the reduc-
tion in the frequency of discipline. These collection techniques included interviewing school staff,
directly observing students across all school settings, tracking office discipline referrals, as well as
monitoring attendance, grades, and standardized test scores. Results indicated that after the first two
years the total number of office discipline referrals decreased by 19%, in-school conferences with
students decreased by 23%, timeouts (when students are required to sit in the office for a period
of time) decreased by 30%, in-school suspensions decreased by 12%, and short-term suspensions
decreased by 60% (Turnbull et al., 2002). Teachers and administrators also indicated that the rate
of progress was substantial given the challenges they face and their history of addressing those
challenges.
Successful implementation of a school-wide PBS should improve school culture and strengthen
pro-social behavior and learning outcomes for the majority (approximately 80%) of students (Horner
Sugai, 2000; Sugai et al., 2010). Recently, numerous publications have focused on school-
wide/systems level change (e.g., Deno et al., 2009; Lewis, Jones, Horner, Sugai, 2010). For those
students who need extra intervention, a secondary PBS can be implemented at the classroom or
small group level.
Tier 2 Interventions
Secondary-level interventions typically target students within a school who are considered to
be at risk for the development of chronic problem behavior patterns (Hagan-Burke et al., 2005).
Approximately 15% of students may require this level of intervention (Sugai et al., 2010). Several
recent articles have highlighted effective class-wide behavior interventions. These interventions
might involve consultation, such as “The Classroom Check-Up” (Reinke, Lewis-Palmer, Merrell,
2008) or have a self-management component, such as “It’s in the Cards” (Murphy Korinek, 2009).
Other strategies may incorporate group contingencies in which the class works together to achieve
goals, such as “Anchor the Boat” (Lohrmann Talerico, 2004). Group contingency interventions
may be implemented alone or used in conjunction with another strategy, such as Positive Peer
“Tootling” (Cihak, Kirk, Boon, 2009) or self-management (Davies Witte, 2000). The two Tier
2 interventions examined in the study were a group contingency intervention (“Mystery Motivator”)
and a teacher-monitored class-wide intervention (“Get ‘Em On Task”).
Psychology in the Schools DOI: 10.1002/pits
3. Behavior Interventions 165
Mystery Motivator
Mystery Motivators are recognition tools based on a lottery-like system that allows a person
to select from a variety of high- and low-value prizes for his or her engagement in targeted positive
behaviors (Wesley Mattaini, 1999). Mystery motivators are unknown rewards that have been shown
to be effective in improving disruptive behaviors (Kehle, Bray, Theodore, 2000). Anticipation
and interest are maintained as a result of the uncertainty of the reward. Each day targeted positive
behaviors are achieved, a person can select the corresponding day on a weekly chart. If the box
on the corresponding day contains a Mystery Motivator symbol, the person can select a reward
from the Mystery Motivator reward menu (Wesley Mattaini, 1999). PBS is best defined as a
system of support that includes proactive strategies for defining and supporting appropriate student
behaviors to create positive school environments; therefore, the Mystery Motivator is considered
a PBS because it is a proactive intervention in which appropriate behavior is defined, supported,
and rewarded. It can be implemented for targeted students or for an entire class. In this study, the
Mystery Motivator was a group contingency, in which the entire class worked together to achieve
rewards.
Get ‘Em On Task
Get ‘Em On Task is a computer-signaling program that helps teachers reward their students
based on an individualized auditory signal system for monitoring student behavior (Althouse, Jenson,
Likins, Morgan, 1999). This program can be used with an individual student or groups of students
to support any positive reinforcement or self-management program (Althouse et al., 1999). It allows
a teacher to use a classroom computer to generate random signals from 0 to 100 per hour with
additional imbedded bonus signals (Jenson, Olympia, Farley, Clark, 2004). The program can
run during the day and track when each signal occurs and what point value was assigned to
that signal. When a signal sounds, the teacher scans the classroom and assigns predetermined
points to students who are on task (Althouse et al., 1999). These students can then exchange the
earned points for rewards (Althouse et al., 1999). Thus, in the following intervention, Get ‘Em
On Task was used as a class-wide intervention, but students worked independently to accumulate
points.
Current research on PBS suggests that approximately 15% of students require targeted (Tier 2)
intervention and provides evidence that mystery motivators work as an intervention for many types
of behavior problems. The mystery motivator can be used with single students, teams, or whole
classrooms to increase or decrease types of behavior. Most studies conducted using the mystery
motivator as an intervention have been implemented at a class-wide level to focus on homework
completion. Little research has been conducted, however, on the implementation of the mystery
motivator as a prevention strategy for off-task behavior.
The purpose of this study was to determine the impact of two PBS programs, the Mystery
Motivator and the Get ‘Em On Task interventions, when implemented at the class-wide level. Al-
though intervention studies typically rate improvement with intervention in comparison to baseline,
this study potentially adds to prior research by comparing two different evidence-based classroom
interventions. It was hypothesized that students who were identified as demonstrating significant
levels of off-task behavior and participated in the Mystery Motivator intervention and the Get ‘Em
On Task intervention would decrease off-task behaviors when compared to those students with no
intervention.
Psychology in the Schools DOI: 10.1002/pits
4. 166 Kraemer et al.
METHODS
Participants
One fifth grade English class (Class I) and one fifth grade Math class (Class II) were selected
from an elementary school in Ohio to participate in this study. The elementary school has a population
of 501 students. Each participating class has a total of 25 students (n = 25). The district serves a
population of 5,276 Pre-K to Grade 12 students. The community has a population of 12,380 (U.S.
Bureau of the Census, 2000). The school is composed of 3.2% Asian/Pacific Islander, 2.8% Multi-
Racial, 92.6% White, non-Hispanic, and 14.4% students with disabilities. The district is suburban,
and 8.9% of its students are classified as economically disadvantaged (on free or reduced lunch).
The study took place in the general education classroom. Classes were selected based on
teacher request, interviews with teachers regarding the severity of students’ off-task behavior, and
data collected through the use of the Behavioral Observation of Students in School (BOSS) (Shapiro,
1996).
Design
Single case designs are a valid methodology for establishing empirical interventions (Stoiber
Kratochwill, 2000). Zhan and Ottenbacher (2001) describe single case experimental designs as
practice based and practitioner oriented. In the school setting, such designs systematically docu-
ment the efficacy of interventions and do not significantly disrupt a classroom routine. A teacher,
intervention specialist, or school psychologist can easily record day-to-day behavior changes of
students, analyze the treatment, and modify the design as the intervention progresses. In fact, the
ability to modify treatment according to the child’s performance during the course of treatment is
one advantage of using this model (Zhan Ottenbacher, 2001), as it allows a school team to identify
optimum treatment for a specific child or group of children. Ultimately, single case experimental
designs can help bring research into the school setting and improve the likelihood that schools
implement research-based interventions to improve student learning. A single case design was cho-
sen for this study so that data could be collected and analyzed without significantly disrupting the
classroom routine. The intervention was implemented using an ABCACBA alternating treatment
design in which A was the baseline, B was the Mystery Motivator and C was the Get ‘Em On Task
intervention. Thus, the independent variables in this study were the Mystery Motivator and the Get
‘Em On Task intervention. The dependent variable was the off-task behavior.
Materials
The BOSS (Shapiro, 1996) was used by independent observers to conduct on-task/off-task
observations of participants throughout the study. It is an observation-coding system used for as-
sessing academic behavior in the classroom and assists observers in measuring levels of on-task
and off-task behaviors via momentary time sampling in 15-second intervals for a period of at least
15 minutes. The on-task behaviors are identified as active engagement and passive engagement, and
the off-task behaviors are identified as off-task motor, off-task verbal, or off-task passive (Hintze,
Volpe, Shapiro, 2002). For the purpose of this study, each observation period lasted 15 minutes
and was divided into 60 intervals, each of which was 15 seconds in length. Frequency of engagement
or off-task behavior was collected using a momentary time-sampling procedure at the beginning of
each 15-second interval. Off-task behavior was coded using a partial interval recording schedule,
where the occurrence of each behavior was recorded only once during each interval. The classrooms
were divided into four quadrants, with each row of students representing a quadrant. The purpose
of using quadrants was to allow the observer to collect a random sample of the room. The order of
Psychology in the Schools DOI: 10.1002/pits
5. Behavior Interventions 167
quadrants was randomly assigned for each observation session at the beginning of the study. During
each time sample, the observer recorded the behavior of the students in the quadrant being observed.
During the next time sample, the next quadrant was observed, and so forth. For each observation,
a timer was set to 15 minutes. The students were in four rows of five to six students. The observer
started the timer and recorded the behavior of the first student in the first row by placing a “+” sign
in the box of the indicated behavior (e.g., off-task verbal if the student was talking or on-task passive
if the student was listening to the teacher). After 15 seconds, the observer recorded the behavior of
the first student in the second row. This behavior recording continued throughout the four rows.
When the observer came back to row one, the second student in the first row was observed and so
forth until the 15 minutes concluded.
Materials needed for the Mystery Motivator intervention included “invisible” markers, weekly
behavior charts, a reward menu for each student, and the identified rewards (Wright, 2004b). Crayola
Color Switchers are watercolor markers that were used for this study; they include various colors
and a special pen with transparent ink. A mark was placed on the Mystery Motivator chart using the
special marker. When the transparent ink was colored over with one of the watercolor pens, a symbol
“magically” appeared in the square. The weekly behavior chart contained a space for each day of the
week. A reward survey was created using the Online Reinforcer Survey Generator (Wright, 2004a).
This survey was conducted with the students to ensure that the reinforcers selected were significant
for the class. Students were asked to list three prizes they would most like to receive from the teacher,
as well as their three favorite classroom activities. A reward menu was then developed based on
the students’ responses to the survey (e.g., candy, 10 minutes of extra recess, and 5 minutes of an
in-class game).
Materials needed for the Get ‘Em On Task intervention included the Get ‘Em On Task computer
program, a computer, a Point Card for each student, a classroom bank where points were recorded
and saved by students, a reward menu with the cost (in points) for each reward, and the identified
rewards (Althouse et al., 1999). For example, a reward menu could be 100 points = homework pass
for spelling/grammar; 75 points = late homework pass for 1 day late; 50 points = computer time;
25 points = candy.
Procedure
After classrooms were chosen, a consent form was sent home that explained the purpose of
the study, the benefits to the student, and a description of how confidentiality was maintained. The
percentage of consent for Class I was 96% and for Class II was 100%. No data were collected
on the students whose parents did not consent. For those whose parents did consent, no records
were disclosed to others; data from all participants were pooled. After permission was obtained,
an informal interview was held with the participants’ teachers to indicate the specific behaviors of
concern that were observed in the classroom. Off-task behavior was a significant problem in both
classrooms; it was defined as calling out, getting out of their seats, and disturbing other students.
Baseline data were collected by the primary researcher and a secondary observer using the BOSS
to set appropriate goals for each class. Data were collected through observation twice a week for 2
weeks. The primary researcher also interviewed the class to create reward menus for the interventions
and trained the classroom teachers on how to implement both the Mystery Motivator and Get ‘Em
On Task interventions. Both teachers were given written directions for each intervention to read to
the class.
Next, the Mystery Motivator was implemented daily for 2 weeks during a 45-minute class
period. The Mystery Motivator Weekly Chart was created for the classes. The goal was the minimum
behavioral criteria the class needed to meet to earn a chance to fill in a blank on the Mystery Motivator
Psychology in the Schools DOI: 10.1002/pits
6. 168 Kraemer et al.
Chart. The teacher introduced the Mystery Motivator by first explaining that the class would have
the chance to earn rewards for good behavior. The teacher reviewed the target behaviors that were
selected and used demonstration and modeling to ensure that students clearly knew either the negative
behaviors that should be avoided (e.g., calling out, bothering others) or the positive behavior that
should be increased (e.g., staying in seat, working quietly). The teacher then introduced the Mystery
Motivator Chart. The teacher explained that the students could earn a chance to fill in the blank on
the chart for the current day to uncover a possible reward if they demonstrated on-task behaviors.
The teacher reviewed the target behaviors and goals posted on the Mystery Motivator Weekly Chart.
Next, the teacher let the class know that the magical letter “M” had been secretly placed in some,
but not all, of the chart squares. If the class revealed the “M” in the chart, a reward could be selected
from the reward menu. If the letter “M” did not appear, the teacher would congratulate and praise
the class for their good behavior but no reward would be given. The teacher also let the class know
that they would have another chance to fill in the Mystery Motivator Chart the next day. At the end
of each week, if the class had met the criteria, the class was able to fill in the Bonus Points box in
which they could receive the reward that appeared in the box. For this intervention, the teacher used
Crayola Color Switchers to mark an “M” in 3 of the 5 days on the weekly chart and wrote a reward
from the reward menu in the Bonus Points box. The boxes varied each week and did not create a
pattern.
To implement the alternating treatment design, the Get ‘Em On Task computer program (Alt-
house et al., 1999) was then implemented daily for 2 weeks during a 45-minute class period. The
teacher first asked the students what they would like to earn in the classroom store. These items
included special activities, privileges, and treats. Next, the teachers had the students vote on the best
reward items and rank them. The highest ranked items cost the most points. Goals were created
based on points per day. Each student had the possibility of earning 10 points per day (100 points
per 2 weeks). After an interval time was set, the teacher implemented the intervention. A copy of
the Point Card was then given to each student. The teacher explained to the class that when the hour
begins and a signal sounds, she would scan the classroom. If students were off task, the teacher
would instruct those students (by name) to mark an X (no points) for the interval. The teacher would
then praise the rest of the class for being on task and instruct them to mark a point for themselves.
Bonus signals could also be used in which 2 points were allotted if students were on task.
At the end of the day, the students added the points in their bank total. This was also a good
time for teachers to review daily progress with students. A classroom store exchange was held
at the end of the 2 weeks in which students could exchange the earned points for items that had
been predetermined as a class. The cost of each item was then subtracted from that student’s bank
total. After each intervention was implemented for 2 weeks, the classrooms reverted to the “no
intervention” condition for 2 weeks. Next, Get ‘Em On Task was implemented again for 2 weeks,
followed by the Mystery Motivator, and a final return to baseline (no intervention) conditions.
Treatment Fidelity
Direct observation using the BOSS was conducted by the researcher two times per week for the
remainder of the study. These observation times occurred on Mondays and Wednesdays each week.
The ABCACBA alternating treatment design was implemented at 2-week intervals after baseline data
were collected. Data were collected at an interval level based on the BOSS direct observation tool.
The Pearson product-moment coefficient was used to measure (r), comparing the data to an alpha
level of 0.05. Interobserver agreement measures were collected by a secondary observer at the same
time as the primary researcher. Interobserver agreement estimates for on- and off-task behavior were
calculated by scoring an agreement when both observers recorded identical frequencies of on- or
off-task behavior during each 15-second interval. Interobserver agreement estimates were calculated
Psychology in the Schools DOI: 10.1002/pits
7. Behavior Interventions 169
by finding the Kappa Coefficient. According to Fleiss (1981) and Cicchetti (1994), values of less
than .40 are poor, values of .40 to .60 suggest fair agreement, values of .60 to .75 represent good
agreement, and values greater than .75 indicate excellent agreement. For this study, interobserver
agreement was deemed acceptable if average agreement between two individual observers was
calculated at a Kappa Coefficient of .60 or higher.
Integrity checklists were given to the teachers to ensure that both interventions were imple-
mented as they were intended. The checklists stated the materials that were needed and listed each
step of the intervention in a script format. Treatment integrity checklists were completed by the
teacher for each day of baseline and intervention and were collected by the primary researcher on a
weekly basis.
Treatment Acceptability
Intervention acceptability was measured using the Behavior Intervention Rating Scale (Elliott
Treuting, 1991). The scale was developed as an instrument to measure teachers’ perceptions
of treatment acceptability and perceived efficacy of classroom interventions. The teacher, upon
completion of the study, completed this measure to assess satisfaction with the interventions. The
items were rated on a 6-point Likert scale ranging from 1, indicating a strong disagreement, to
6, indicating a strong agreement with the provided statements (e.g., “Most teachers would find
this intervention appropriate for challenging behaviors,” “The intervention would be an appropriate
intervention for a variety of children”). A survey was also used to measure intervention acceptability
for students. This survey contained six questions about each intervention on a 5-point Likert scale
ranging from 1 (strongly disagree) to 5 (strongly agree), such as “I liked the Mystery Motivator” and
“Get ‘Em On Task helped me behave better.” The survey was completed individually by students.
When students were finished, the survey was placed face-down on a table in the back of the room.
Students did not place names on the survey forms. Students who did not receive consent were asked
to quietly read a book until all students were finished filling out the survey.
RESULTS
AccordingtoHunleyandMcNamara(2010), whenconductingasinglecasedesignthefollowing
data should be collected when interpreting and analyzing results: visual analysis, effect size (ES),
and Goal Attainment Scaling (GAS). Visual inspection was conducted to determine general patterns
of the data across baseline and intervention conditions. ES measured the magnitude of change across
various phases of intervention. GAS determined how closely student performance aligned with
the expected level of outcome for the goal. Additional data, such as non-overlapping data points,
treatment integrity, and intervention acceptability, were also collected.
Figure 1 displays the intervention results for Class I. The graph displays the average percentage
of off-task behavior during baseline and at each stage of intervention. A represents the baseline, B
represents the Mystery Motivator intervention, and C represents the Get ‘Em On Task intervention.
Each week the class was monitored for progress on two occasions. The original baseline for Class
I was 34% (week 1) and 38% (week 2). Figure 1 demonstrates that during the first intervention
phase, the Get ‘Em On Task (C) intervention was slightly more successful at decreasing off-task
behavior than the Mystery Motivator intervention (B). By the end of the second phase of each
intervention, however, student performance was similar, and demonstrated significant improvement
when compared to the original baseline.
Figure 2 displays the intervention results for Class II. Each week the class progress was
monitored on two occasions in the same manner as for Class I. The original baseline for Class II
was 14.5% (week 1) and 31.5% (week 2). Figure 1 demonstrates that during the first intervention
Psychology in the Schools DOI: 10.1002/pits
8. 170 Kraemer et al.
Class I Percentage of Off-Task Behavior
0
2
4
6
8
10
12
14
16
18
20
22
24
26
28
30
32
34
36
38
40
1 3 5 7 9 11 13 15 17 19 21 23 25 27
Days
%
of
off-task
behavior
% of off-task behavior
A
B
C
A
C
B
A
FIGURE 1. Baseline and progress-monitoring data for Class I.
Class II Percentage of Off-Task Behavior
0
2
4
6
8
10
12
14
16
18
20
22
24
26
28
30
32
34
36
38
40
1 3 5 7 9 11 13 15 17 19 21 23 25 27
Days
%
of
off-task
behavior
% of off-task behavior
A B C A C B A
FIGURE 2. Baseline and progress-monitoring data for Class II.
phase, the Get ‘Em On Task (C) intervention was slightly more successful at decreasing off-task
behavior than the Mystery Motivator intervention (B). By the end of the second phase, however,
student performance in Class II under both Mystery Motivator and Get ‘Em On Task interventions
demonstrated significant improvement when compared to the original baseline.
In this study, the specific type of ES used is referred to as the d-index. The d-index was
calculated as the intervention mean minus the baseline mean divided by the standard deviation of
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9. Behavior Interventions 171
Table 1
Percentage of Off-Task Behavior Corresponding to GAS Ratings
GAS Rating −2 −1 0 +1 +2
Class I – Percent Off-Task ≥43.2% 43.2% 36% 36% 36% 28.8% ≤28.8%
Class II – Percent Off-Task ≥27.6% 27.6% 23% 23% 23% 18.4% ≤18.4%
all the data for each intervention. The d-index was used to determine the magnitude of a change in
level when the data do not indicate a trend. When calculated, it takes into account each data point’s
actual score. Cohen (1992) recommends using ±.2, ±.5, and ±.8 as guidelines for approximating
a small, medium, and large effect. The d-index should be interpreted with caution and used along
with visual inspection of the data. The ES values for both interventions were calculated based on
the weekly average. The ES for Get ‘Em On Task was calculated as −1.72 for Class I and −1.46 for
Class II, which is considered to be a large effect. The ES for the Mystery Motivator was calculated
as −1.62 for Class I and −1.07 for Class II, which is also considered to be a large effect.
GAS was used to evaluate the overall rate of off-task behavior during both the Mystery Motivator
intervention and the Get ‘Em On Task intervention (see Table 1). The scale was created following
the guidelines for a percentage-of-change technique identified by Hunley and McNamera (2010) to
enhance scale validity. The mean baseline after 2 weeks for Class I was 36% off-task. A rating of 0
would indicate no change for Class I between baseline and intervention with a score of 36% off-task
during the intervention phase. Twenty percent of the baseline score (7.2) was added or subtracted
from the baseline score to create the ±2 ratings for the GAS; −2 = 43.2% and +2 = 28.8%. By the
end of the Mystery Motivator intervention, Class I decreased off-task behaviors to 5% for a GAS
score of +2. For the Get ‘Em On Task intervention, Class I decreased off-task behavior to 7% for a
GAS score of +2. This GAS indicates a much improved level of attainment for both interventions.
The mean baseline after 2 weeks for Class II was 23% off task. A rating of 0 would indicate
no change for Class I between baseline and intervention with a score of 23% off task during the
intervention phase. Twenty percent of the baseline score (4.6) was added or subtracted from the
baseline score to create the ±2 ratings for the GAS ; −2 = 27.6% and +2 = 18.4%.
Class II decreased off-task behavior to 6% by the end of the Mystery Motivator intervention to
be assigned a GAS score of +2. By the end of the Get ‘Em On Task intervention, Class II decreased
off-task behavior to 5% for a GAS score of +2. This GAS indicates a much improved level of
attainment for both the Mystery Motivator and Get ‘Em On Task interventions.
The percentage of non-overlapping data points (PND) was determined by examining the data
across both baseline and intervention phases and calculating the percentage of intervention points
that do not overlap the baseline points (the number of data points that do not overlap divided by the
number of total data points). For this study, the PND was calculated based on a weekly average. The
smaller the percentage of overlap, the greater the intervention effect. Scruggs, Mastropieri, Cook,
and Escobar (1986) suggest that the criteria for evaluating PND are 50% or lower PND = ineffective
or unreliable; 50-70% PND = questionably effective; 70-90% PND = moderately effective; and
90% or higher PND = highly effective. It is important to note that PND lacks sensitivity for highly
successful interventions (e.g., 100% PND), and it only uses the most extreme baseline data point to
compare to the intervention data. (“Extreme” is the highest baseline point if the intervention is to
increase a behavior or the lowest baseline point if the intervention is to decrease a behavior.) Thus,
in this study, because the goal is to decrease off-task behavior, one unusually low baseline data point
can affect the reliability of the PND. The PND for the Mystery Motivator was calculated at 100%
for Class I and 75% for Class II, which is considered to be highly effective in Class I and moderately
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10. 172 Kraemer et al.
Table 2
Summary of Data Analysis Results
A B C A C B A
Class I
Off-task behavior 36 23 13.45 24.5 5.5 8 20
ES ∗∗ −1.67 −1.51 ∗∗ −1.94 −1.80 ∗∗
GAS 0 +2 +2 +2 +2 +2 +2
PND ∗∗ 100% 100% ∗∗ 100% 100% ∗∗
Class II
Off-task behavior 23 16.25 5 23.5 3.5 7.5 16.5
ES ∗∗ −0.82 −1.51 ∗∗ −1.63 −1.49 ∗∗
GAS 0 +2 +2 −1 +2 +2 +2
PND ∗∗ 25% 100% ∗∗ 100% 100% ∗∗
∗∗Baseline data points.
effective in Class II. The PND for the Get ‘Em On Task intervention was calculated at 100% for
Class I and Class II, which is considered highly effective (see Table 2).
A treatment integrity checklist was completed for each day of baseline and intervention. The
results of the checklist indicated that the study was implemented as planned approximately 93% of
the time. On rare occasions, the teacher was unable to complete a step of the intervention, such as
instructing students to mark point cards at an appropriate interval.
Interobserver agreement was assessed for the occurrence or nonoccurrence of off-task behav-
iors using the Kappa Coefficient of Agreement. Fleiss (1981) and Cicchetti (1994) have provided
interpretative guidelines. Values of less than .40 are poor, values of .40 to .60 suggest fair agree-
ment, values of .60 to .75 represent good agreement, and values greater than .75 indicate excellent
agreement. Interobserver agreement was conducted once a week for the 14-week implementation
period and indicated a value of .71, which represents good agreement.
Intervention acceptability was assessed for both the Mystery Motivator and the Get ‘Em On Task
intervention using the Behavior Intervention Rating Scale (Elliott Treuting, 1991). The teacher
evaluated the intervention by circling the number (1–6) which best described the disagreement or
agreement with each statement. The teacher in Class I scored the Mystery Motivator as having an
average of 5.04 rating and the Get ‘Em On Task as having an average of 5.59 rating, indicating that
both interventions were deemed acceptable. The teacher in Class II scored the Mystery Motivator
as having an average of 5.46 rating and the Get ‘Em On Task as having an average of 5.76 rating,
indicating that this teacher also found both interventions acceptable. Both teachers noted strengths
and weaknesses for each intervention, felt the interventions were appropriate for challenging behav-
iors, and they both indicated they would suggest the interventions to other teachers. Both teachers,
however, noted that they felt the students’ behavior may not remain at an improved level after the
intervention is discontinued and that the intervention may not improve the students’ behavior in
other settings (e.g., other classrooms, home).
The students from each class were also asked to evaluate the acceptability of the Mystery
Motivator and Get ‘Em On Task interventions. This survey was a 5-point Likert scale where 1
indicated “strongly disagree” and 5 indicated “strongly agree.” Class I scored the Mystery Motivator
as having an average of a 3.59 rating; Class II’s rating was 3.5. Thus, both classes “somewhat liked”
the Mystery Motivator. Class I scored Get ‘Em On Task as having an average of 3.98 rating; Class
II’s rating was 3.97. Thus, Get ‘Em On Task was also “somewhat liked” by students.
Psychology in the Schools DOI: 10.1002/pits
11. Behavior Interventions 173
DISCUSSION
The results of this study indicate that both the Mystery Motivator and the Get ‘Em On Task
interventions effectively decreased off-task behaviors when compared to no intervention. As seen
in the progress-monitoring charts, the Get ‘Em On Task intervention was somewhat more effective
than the Mystery Motivator, with a difference in the decrease in overall off-task behavior of 16.75%.
When we examine the end points of the interventions, however, both were equally successful. In
other words, Get ‘Em On Task decreased off-task behaviors more quickly, but both interventions
were equally effective after several weeks of implementation.
The Mystery Motivator involved a group contingency in which students had a mutual goal.
Students were aware that their individual behavior impacted other students in the class. Although
peer pressure can elicit negative side effects, no such results were noted. The intervention promoted
positive interdependence, and students reminded one another about the reward they were trying
to earn. In any group contingency, it is essential that teachers carefully monitor the classroom
environment, encourage positive interactions among students, and intervene if there are instances
of students becoming “scapegoats” or targets of belittling if classmates perceive they made the
group “lose” their reward. In the present study, no negative interactions were observed; however,
researchers conducting future studies and teachers implementing group contingencies should remain
aware of this possibility.
Get ‘Em On Task involved students earning points individually, which allowed for a greater
degree of individual student accountability. Although it required “banking” points and delaying
gratification (because rewards were given at the end of the 2-week period), students had the benefit
of receiving immediate feedback (“Was I on-task during the beep? Did I earn a point?”). Furthermore,
although individual student data sheets were not collected or evaluated as part of this study, Get ‘Em
On Task allowed the collection of ongoing progress monitoring through individual student point
sheets. Therefore, a teacher can implement the program for the entire class, but evaluate whether it
is or is not effective for specific students. These data would be excellent to use to determine whether
certain class members require more intensive (Tier 3, tertiary) behavior supports.
Teacher attitudes toward an intervention are important; both teachers participating in this study
had positive, open attitudes toward both interventions. They were interested in participating in
the study and implemented the programs with a high degree of integrity. The Get ‘Em On Task
intervention was rated as slightly more acceptable by both teachers and students. Student responses
indicated that Get ‘Em On Task was somewhat more successful. They reported that they could stay
on-task better when they monitored their own behavior, instead of having the teacher decide whether
the whole class was on-task as is done during the Mystery Motivator intervention. Students who
liked the Mystery Motivator better, however, noted this liking because there was a chance to receive
a reward every day and then earn a bonus reward if all squares were filled in for the week.
Limitations
One limitation to this study is the limited external validity of single-subject designs. Because
the participants were from two classrooms in one school district, it is not representative of the overall
population, thereby limiting generalizability of results. Another limitation is the scheduling con-
straints due to holiday breaks and the fifth grade class attending camp. Because of these constraints,
the time between alternating treatments was not consistent. A further limitation is the lack of counter-
balancing. Both classes followed the same ABCACBA alternating treatment design. Future research
could be conducted in which the intervention implementation pattern could be altered for each class.
Some limitations of the Get ‘Em On Task intervention include the cost of the program as well as
the extra cost of the licensures for any extra computers that the program will be placed on. Another
Psychology in the Schools DOI: 10.1002/pits
12. 174 Kraemer et al.
limitation for the Get ‘Em On Task intervention is the need for access to a computer in the classroom.
Although many schools now have this access, some schools may have limited technology resources.
Implications and Future Research
Behavior problems in the classroom indicate a strong need for practical, effective interventions
that can be easily used within general education settings. The Mystery Motivator can be used
with single students, teams, or whole classrooms to increase or decrease specific behaviors (Wright,
2004b). Get ‘Em On Task can also be used with single students, teams, or whole classrooms to support
any positive reinforcement or self-management program (Althouse et al., 1999). When teachers or
school psychologists determine a need for Tier 2 interventions to decrease off-task classroom
behaviors, either intervention may be useful. The interventions allow teachers to concentrate more
on academics than behavior management. Both were “fun,” involved desirable rewards, and allowed
all students (not just the ones needing more intensive interventions) to participate.
Educators who want to incorporate a self-monitoring component and can pay the initial cost
associated with implementing Get ‘Em On Task may find it beneficial, particularly because results of
this study indicated that it was somewhat more effective in immediately decreasing off-task behavior.
The Mystery Motivator, however, was also effective. It may be more beneficial to educators who
want an inexpensive, easy classroom management program that involves a group contingency in
which the class works together to achieve a common goal.
Practitioners can use these interventions with any population and any level of behavior. To
strengthen the research for both the Mystery Motivator and Get ‘Em On Task interventions, however,
further investigation with both older and younger children, as well as with children from types of
school districts different than those targeted in this study, would be beneficial. Furthermore, this study
did not examine whether these interventions were associated with a reduction of off-task behaviors
in other settings. Because the ultimate goal of PBS is to improve behavior across school settings, a
future study examining generalization of behavior change as a result of these Tier 2 interventions
would be beneficial. Additional research may be conducted to investigate academic outcomes and
work production when implementing these interventions. The authors were encouraged by the results
from the study and encourage further examination of these Tier 2 interventions.
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