Inferential statistics allow researchers to make generalizations about populations based on samples. Some key inferential statistical techniques discussed in the document include hypothesis testing using t-tests, chi-square tests, and regression analysis. The document provides a brief history of inferential statistics and outlines the process for hypothesis testing, including defining the null and alternative hypotheses, determining the level of significance, calculating test statistics, and drawing conclusions. It also discusses types of errors that can occur in sampling and hypothesis testing.
Measures of Descriptive statistics and Inferential statistics MeganShaw38
The presentation will walk you through descriptive and inferential statistic measures, including a simple scenario, key measures and applications of descriptive and inferential statistic's.
Measures of Descriptive statistics and Inferential statistics MeganShaw38
The presentation will walk you through descriptive and inferential statistic measures, including a simple scenario, key measures and applications of descriptive and inferential statistic's.
Robert Merton adopted the Biblical parable, "the rich get richer and the poor get poorer," (Matthew, 13:12) in explaining the disproportionate credit given to eminent scientists relative to similar contributions from unknown scientists. In doing so, he established a basic sociological effect spanning, "...in varying degrees every social institution..." This pdf traces a brief history of scientific citations, establishes its relationship to models of relative proportionate growth and extends it to nonscalable randomness and/or extreme value theory. Along the way, "hot hands" in streaks of success are also considered.
Explanation Essay Examples. Explanation Essay Examples.Amanda Rose
How to Write an Explanatory Essay Like a Pro | AssignmentPay. Types of essays. Argumentative Essay Examples - PDF. 24 Greatest College Essay Examples – RedlineSP. 018 Classical Argument Unit Assignment Page 1 Essay Example Examples Of .... ️ Explanation essay sample. Gold Essay: Process explanation essay .... 2 Explanatory Essay Examples That Make the Grade. How To Write An Essay Examples – Telegraph. Writing a rhetorical analysis essay. Simple essay writing. Writing A Critical Analysis Essay – Tips from Experts - How to Write a .... PPT - MULTI-GENRE RESEARCH PROJECT SHOWCASE PowerPoint Presentation ....
For the last few centuries, statistics has remained a part of mathematics as the original
work was done by mathematicians like Pascal (1623-1662), James Bernoulli (1654-1705),
De Moivre (1667-1754), Laplace (1749-1827), Gauss (1777-1855), Lagrange, Bayes,
Markoff, Euler etc. These mathematicians were mainly interested in the development of
the theory of probability as applied to the theory of games and other chance phenomena.
Till early nineteenth century, statistics was mainly concerned with official statistics needed
for the collection of information on revenue, population and area of land under cultivation
etc. of a state or kingdom.
The science of statistics developed gradually and its field of application widened day
by day. Hence, it is difficult to give an exact definition of statistics. The definition changed
from time to time depending upon its use and application. Numerous definitions have
been coined by different people. These definitions reflect the statistical angle and field of
activity.
Why have the Loyalists largely been forgotten in history Do you .docxalanfhall8953
Why have the Loyalists largely been forgotten in history? Do you believe they acted out of patriotism to Britain or out of self-interest? Explain.
Loyalists can be described as American colonists who were always loyal to the empire of the British, and they believed in the monarchy of the British during the revolutionary war of the Americans. The patriots viewed them to be traitors of their nation. They were also viewed to be the people that prevented America’s liberty (Baker, 1921).
History is often written as a way of appreciating the victors. Often, the losers are not kept in the records. It is what happened to the loyalists. They were simply loyal to the king and the country that they had originated from. Loyalty was a value that every Englishman and colonist had to have. The other colonists were obsessed of having freedom and liberty. However, the loyalists acted on what they thought were right for them to do. For doing the right thing, they were punished, ridiculed, and killed. They have also been forgotten in history since people believed that they were failures and traitors to their country (Evans, 1968).
I tend to believe that the loyalists were patriotic to the British, and that is why they acted that way. However, they had their ideas, and they believed that were doing the right thing. They believed that by staying loyal to the British rule, they were respectful to their country. Their patriotism was a way of being respectful to their mother country. They believed in the monarch system of government while other people believed in democracy. They were opposed to the views of the rebels thus they did not agree to what the rebels wanted to do. They believed that the rebels were traitors to their mother country. The loyalists believed that they were honorable by being patriotic.
References
Baker, W. K. (1921). The loyalists,. London: G. Routledge & Sons [etc.].
Evans, G. N. (1968). The Loyalists. Vancouver: Copp Clark Pub. Co.
W A R H O L C R E D I T H E R E
w w w . s c i a m . c o m SCIENTIFIC AMERICAN 41
PICTURE?PICTURE?
What’s Wrong with This
PSYCHOLOGISTS OFTEN USE THE FAMOUS
RORSCHACH INKBLOT TEST AND RELATED
TOOLS TO ASSESS PERSONALITY AND
MENTAL ILLNESS. BUT RESEARCH SHOWS
THAT INSTRUMENTS ARE FREQUENTLY
INEFFECTIVE FOR THOSE PURPOSES
by Scott O. Lilienfeld, James M. Wood and Howard N. Garb
PHOTOGRAPHS BY JELLE WAGAANER
But how correct would they be? The answer is important
because psychologists frequently apply such “projective” in-
struments (presenting people with ambiguous images, words
or objects) as components of mental assessments, and because
the outcomes can profoundly affect the lives of the respondents.
The tools often serve, for instance, as aids in diagnosing men-
tal illness, in predicting whether convicts are likely to become
violent after being paroled, in assessing the mental stability of
parents engaged in custody battles, and in discerning whether
children have be.
2 hours agoLuke Powell Main Post - Luke PowellCOLLAPSETo.docxvickeryr87
2 hours ago
Luke Powell
Main Post - Luke Powell
COLLAPSE
Top of Form
When conducting research, it is necessary that the researcher not only know how to find the sources needed to answer the question that they have created but also how to analyze that information to understand which research design was used. Doing so will allow the researcher to provide the evidence needed to support or reject the question being asked. Quantitative research is the investigation of phenomena that lends themselves to precise measurement and quantification, often involving a controlled design (Polit & Beck, 2017). This discussion will look at two different quantitative studies and the qualities that make them so.
Sleep Apnea Study Number One
This study by Boulos et al.(2017) looks at the effectiveness of using home sleep apnea testing (HSAT) as a means of detecting obstructive sleep apnea (OSA) in stroke or transient ischemic attack (TIA) inpatients and outpatients. OSA can negatively impact poststroke functional recovery and by using HSAT these patients can be screened and diagnosed for OSA sooner and improve their poststroke functional and motor recovery (Boulos et al., 2017).
The question being asked is therapeutic in nature. The design of the study is listed under the methods section as a single-center prospective observational study. An observational study means that the researchers do not intervene by manipulating the independent variable (Polit & Beck, 2017). The independent variable within this study would be that all participants have had a stroke or TIA. Prospective designs are studies that begin with a presumed cause and look forward in time for its effect (Polit & Beck, 2017). Within this study, OSA was the presumed cause in a delay of functional and motor recovery for those patients who suffered a stroke or TIA. This design method was appropriate for the group being used. A control group would not have helped to validate the use of HSAT in stroke recovery since those within that group would not be suffering from the same effects. The use of t-tests, Wilcoxon rank sum-test, and multivariate logistic regression were used to analyze the data (Boulos et al., 2017). The results demonstrated that the use of HSAT in the poststroke or TIA population was effective at expediting the diagnosis and treatment of OSA (Boulos et al., 2017).
Sleep Apnea Study Number Two
The second study is similar to the first in that it evaluated patients with acute ischemic stroke for the prevalence of sleep apnea and compared the functional outcomes of patients with and without sleep apnea at the 3rd month after an acute ischemic stroke (Nair et al., 2019). The type of question being asked is an etiology in that it looks to see if OSA is a risk factor for stroke. The design of the study is under the methodology section and is listed as a prospective observational study. This type of study is also known as a cohort design and as stated by Polit & Beck (2017), it is the strong.
Essay on Stereotype | Stereotype Essay for Students and Children in .... Stereotyping an individual Essay Example | Topics and Well Written .... Essay on Gender and Stereotype in Sitcom - GCSE Media Studies - Marked .... Essay websites: Stereotypes essays. 001 Stereotypes Essay Example Of Mental Illness Comparison With Ethnic .... Essays on stereotypes and media. Marvelous Stereotypes Essay ~ Thatsnotus. Stereotypes Essay | Psychology - Year 11 WACE | Thinkswap. Stereotypes in the Media Essay Example | Topics and Well Written Essays .... (PDF) Stereotyping and Stereotypes. Negative Stereotypes and the Effects | Get 24/7 Homework Help | Online .... Need Help Writing an Essay? - essay on gender stereotypes in the media .... Essay stereotypes - frudgereport954.web.fc2.com. Argumentative - Stereotyping Essay Example | Topics and Well Written .... Racial Stereotyping Essay Example | Topics and Well Written Essays .... Stereotypes essays. Business paper: Stereotype essays. Essays on stereotypes. Stereotype Essay Example | Topics and Well Written Essays - 750 words. Essay on Stereotypes – – Example Essay - PHDessay.com.
Student Name CATEGORY AND CRITERIA(A+)15(A).docxdeanmtaylor1545
Student Name:
CATEGORY AND CRITERIA
(A+)
15
(A)
14
(B+)
13
(B-)
12
(C)
11
(D+)
10
(D-)
9
(F)
8
Introduction
Paper begins in a meaningful way and not with the beginning of human history. Introduction includes
consideration of the background circumstances of your invention.
Thesis Statement
A sophisticated thesis statement is present, which goes beyond a simplistic good or bad judgment on the
invention.
Interpretation and Analysis
There should be no filler statements. Make sure to acknowledge the implications of your invention.
Use of Evidence
Use concrete examples that are taken directly from your sources. Do not speak in generalities or
abstraction. Tie your writing to the specific and to details.
Research Sources
A minimum of 5 textual sources (3 academic, 2 popular) need to be present in the paper. Sources need
to be relevant, interpreted accurately, and successfully incorporated throughout the essay.
Organization and Paragraph Development
Essay is logically organized. Transitions smoothly connect each idea from one paragraph to the next.
MLA Format and Citations
1" margin, correct heading, essay text is double-spaced in 12pt. Times New Roman font. Paper is a
minimum of 5 full pages. Essay is given an engaging title beyond "Essay #3" Specific examples are
properly cited parenthetically with page number reference and in the Works Cited page.
Grammar, Spelling, and Punctuation
Use of correct grammatical conventions and punctuation. Lack of spelling errors.
Style and Tone
Style, tone, and word choice are appropriate to audience specifications. Lack of clichés, personal
pronouns, contractions, slang, and abbreviations. Varied sentence structure.
Conclusion
Presents a coherent conclusion that successfully draws essay to an end without being repetitive.
TOTAL FINAL GRADE:
POINTS EARNED
Grade Rubric: Essay #3: Invention Research Paper
You can use the student post as example
Student 1. I will update the file for student 2
Anishka Gupta
Week 2
COLLAPSE
Top of Form
The internet is changing the way we work, socialize, create and share information, do shopping, organize the flow of people, ideas, and things around the globe. Every innovation has some good and some bad impact on the country’s economy that might affect or increase the revenue of small or big businesses. According to the general online shopping statistics, online shopping is growing so fast that the global online shopping market size is predicted to hit 4 trillion in 2020. In the USA alone, it is expected to have 300 million online shoppers by 2023 which are 91% of the country’s population. 69% of Americans shopped online whereas 25% of Americans shop online at least once per month. All these purchases are not being made in a store which means these have a significant impact on the local economy. Online purchases directly impact the local economy as it reduces the amount of sales tax the state was supposed to col.
Short Essay on Safety First [100, 200, 400 Words] With PDF - English .... Essay On Safety. Personal Health and Safety Essay Example | Topics and Well Written .... School Safety Essay Contest. Safety measures in school essay. Free school safety Essays and Papers .... [SHORT] Essay on Road Safety | 200 Words | Class 7,8,9,10 - Study-Phi. Essay safety rules. Health And Safety Essay Examples Free Essay Example. write an essay on the occupational health and safety. Write an essay on Road Safety | Essay Writing | English - YouTube. Occupational Safety and Health Administration (OSHA) Essay Example .... Fire Safety Essay Contest - Office of Insurance and Safety Fire .... Wonderful Safety Patrol Essay ~ Thatsnotus. Road Safety Essay | Short Essay on Road Safety in 300 and 500 Words - A .... Why is Safety Important at the Workplace | Occupational Safety And ....
Surrogate Science: How Fisher, Neyman-Pearson, and Bayes Were Transformed int...jemille6
Gerd Gigerenzer (Director of Max Planck Institute for Human Development, Berlin, Germany) in the PSA 2016 Symposium:Philosophy of Statistics in the Age of Big Data and Replication Crises
Student Name:
CATEGORY AND CRITERIA
(A+)
15
(A)
14
(B+)
13
(B-)
12
(C)
11
(D+)
10
(D-)
9
(F)
8
Introduction
Paper begins in a meaningful way and not with the beginning of human history. Introduction includes
consideration of the background circumstances of your invention.
Thesis Statement
A sophisticated thesis statement is present, which goes beyond a simplistic good or bad judgment on the
invention.
Interpretation and Analysis
There should be no filler statements. Make sure to acknowledge the implications of your invention.
Use of Evidence
Use concrete examples that are taken directly from your sources. Do not speak in generalities or
abstraction. Tie your writing to the specific and to details.
Research Sources
A minimum of 5 textual sources (3 academic, 2 popular) need to be present in the paper. Sources need
to be relevant, interpreted accurately, and successfully incorporated throughout the essay.
Organization and Paragraph Development
Essay is logically organized. Transitions smoothly connect each idea from one paragraph to the next.
MLA Format and Citations
1" margin, correct heading, essay text is double-spaced in 12pt. Times New Roman font. Paper is a
minimum of 5 full pages. Essay is given an engaging title beyond "Essay #3" Specific examples are
properly cited parenthetically with page number reference and in the Works Cited page.
Grammar, Spelling, and Punctuation
Use of correct grammatical conventions and punctuation. Lack of spelling errors.
Style and Tone
Style, tone, and word choice are appropriate to audience specifications. Lack of clichés, personal
pronouns, contractions, slang, and abbreviations. Varied sentence structure.
Conclusion
Presents a coherent conclusion that successfully draws essay to an end without being repetitive.
TOTAL FINAL GRADE:
POINTS EARNED
Grade Rubric: Essay #3: Invention Research Paper
Binxin Li
week2
COLLAPSE
Top of Form
For those three videos, the most interesting thing for me is the rapid growth online marketplace all over the world. As the TED speaker said, the online marketplace has two sides: the bright side and the dark side. It is true, now some small local stories may even face a worse situation than some economic recession period. For my own story, when I was in China last winter, I almost never go out of my house. If I lack some daily items, I could just order those things online and pick them up in front of my house very soon. The APP named"MeiTuan". Sometimes it surely hurt part of the local economy. However, with the expansion of the service, more and more local stories also are included in their services list. I think this is just the speaker talked about, all the participators within the purchasing action would benefit: for me, I could easily get the item I need; for MeiTuan, they could get the services fee; for local stories, they may get more potential opportunity to gain profit; and finally, more people ma.
Good Cause And Effect Essay. 100 Important Cause and Effect Essay TopicsJennifer Johnson
2 Cause and Effect Essay Examples That Will Cause a Stir. Buy Cause And Effect Essay Outline - An Ultimate Guide to Writing a .... 007 Essay Example Good Cause And Effect Topics Sample Outline L .... 015 Sample Cause And Effect Essay Outline Topics L ~ Thatsnotus. Good cause effect essay topics. What are good topics for a cause and .... How To Write A Short Cause And Effect Essay - Aitken Words. Short cause and effect essay. Cause and Effect Essay Examples | YourDictionary. Cause And Effect Essay Examples, Structure, Tips and Writing Guide .... Buy cause and effect essay structure example global warming! Global ....
JMeter webinar - integration with InfluxDB and GrafanaRTTS
Watch this recorded webinar about real-time monitoring of application performance. See how to integrate Apache JMeter, the open-source leader in performance testing, with InfluxDB, the open-source time-series database, and Grafana, the open-source analytics and visualization application.
In this webinar, we will review the benefits of leveraging InfluxDB and Grafana when executing load tests and demonstrate how these tools are used to visualize performance metrics.
Length: 30 minutes
Session Overview
-------------------------------------------
During this webinar, we will cover the following topics while demonstrating the integrations of JMeter, InfluxDB and Grafana:
- What out-of-the-box solutions are available for real-time monitoring JMeter tests?
- What are the benefits of integrating InfluxDB and Grafana into the load testing stack?
- Which features are provided by Grafana?
- Demonstration of InfluxDB and Grafana using a practice web application
To view the webinar recording, go to:
https://www.rttsweb.com/jmeter-integration-webinar
Slack (or Teams) Automation for Bonterra Impact Management (fka Social Soluti...Jeffrey Haguewood
Sidekick Solutions uses Bonterra Impact Management (fka Social Solutions Apricot) and automation solutions to integrate data for business workflows.
We believe integration and automation are essential to user experience and the promise of efficient work through technology. Automation is the critical ingredient to realizing that full vision. We develop integration products and services for Bonterra Case Management software to support the deployment of automations for a variety of use cases.
This video focuses on the notifications, alerts, and approval requests using Slack for Bonterra Impact Management. The solutions covered in this webinar can also be deployed for Microsoft Teams.
Interested in deploying notification automations for Bonterra Impact Management? Contact us at sales@sidekicksolutionsllc.com to discuss next steps.
Smart TV Buyer Insights Survey 2024 by 91mobiles.pdf91mobiles
91mobiles recently conducted a Smart TV Buyer Insights Survey in which we asked over 3,000 respondents about the TV they own, aspects they look at on a new TV, and their TV buying preferences.
Epistemic Interaction - tuning interfaces to provide information for AI supportAlan Dix
Paper presented at SYNERGY workshop at AVI 2024, Genoa, Italy. 3rd June 2024
https://alandix.com/academic/papers/synergy2024-epistemic/
As machine learning integrates deeper into human-computer interactions, the concept of epistemic interaction emerges, aiming to refine these interactions to enhance system adaptability. This approach encourages minor, intentional adjustments in user behaviour to enrich the data available for system learning. This paper introduces epistemic interaction within the context of human-system communication, illustrating how deliberate interaction design can improve system understanding and adaptation. Through concrete examples, we demonstrate the potential of epistemic interaction to significantly advance human-computer interaction by leveraging intuitive human communication strategies to inform system design and functionality, offering a novel pathway for enriching user-system engagements.
Connector Corner: Automate dynamic content and events by pushing a buttonDianaGray10
Here is something new! In our next Connector Corner webinar, we will demonstrate how you can use a single workflow to:
Create a campaign using Mailchimp with merge tags/fields
Send an interactive Slack channel message (using buttons)
Have the message received by managers and peers along with a test email for review
But there’s more:
In a second workflow supporting the same use case, you’ll see:
Your campaign sent to target colleagues for approval
If the “Approve” button is clicked, a Jira/Zendesk ticket is created for the marketing design team
But—if the “Reject” button is pushed, colleagues will be alerted via Slack message
Join us to learn more about this new, human-in-the-loop capability, brought to you by Integration Service connectors.
And...
Speakers:
Akshay Agnihotri, Product Manager
Charlie Greenberg, Host
Accelerate your Kubernetes clusters with Varnish CachingThijs Feryn
A presentation about the usage and availability of Varnish on Kubernetes. This talk explores the capabilities of Varnish caching and shows how to use the Varnish Helm chart to deploy it to Kubernetes.
This presentation was delivered at K8SUG Singapore. See https://feryn.eu/presentations/accelerate-your-kubernetes-clusters-with-varnish-caching-k8sug-singapore-28-2024 for more details.
UiPath Test Automation using UiPath Test Suite series, part 4DianaGray10
Welcome to UiPath Test Automation using UiPath Test Suite series part 4. In this session, we will cover Test Manager overview along with SAP heatmap.
The UiPath Test Manager overview with SAP heatmap webinar offers a concise yet comprehensive exploration of the role of a Test Manager within SAP environments, coupled with the utilization of heatmaps for effective testing strategies.
Participants will gain insights into the responsibilities, challenges, and best practices associated with test management in SAP projects. Additionally, the webinar delves into the significance of heatmaps as a visual aid for identifying testing priorities, areas of risk, and resource allocation within SAP landscapes. Through this session, attendees can expect to enhance their understanding of test management principles while learning practical approaches to optimize testing processes in SAP environments using heatmap visualization techniques
What will you get from this session?
1. Insights into SAP testing best practices
2. Heatmap utilization for testing
3. Optimization of testing processes
4. Demo
Topics covered:
Execution from the test manager
Orchestrator execution result
Defect reporting
SAP heatmap example with demo
Speaker:
Deepak Rai, Automation Practice Lead, Boundaryless Group and UiPath MVP
Software Delivery At the Speed of AI: Inflectra Invests In AI-Powered QualityInflectra
In this insightful webinar, Inflectra explores how artificial intelligence (AI) is transforming software development and testing. Discover how AI-powered tools are revolutionizing every stage of the software development lifecycle (SDLC), from design and prototyping to testing, deployment, and monitoring.
Learn about:
• The Future of Testing: How AI is shifting testing towards verification, analysis, and higher-level skills, while reducing repetitive tasks.
• Test Automation: How AI-powered test case generation, optimization, and self-healing tests are making testing more efficient and effective.
• Visual Testing: Explore the emerging capabilities of AI in visual testing and how it's set to revolutionize UI verification.
• Inflectra's AI Solutions: See demonstrations of Inflectra's cutting-edge AI tools like the ChatGPT plugin and Azure Open AI platform, designed to streamline your testing process.
Whether you're a developer, tester, or QA professional, this webinar will give you valuable insights into how AI is shaping the future of software delivery.
Kubernetes & AI - Beauty and the Beast !?! @KCD Istanbul 2024Tobias Schneck
As AI technology is pushing into IT I was wondering myself, as an “infrastructure container kubernetes guy”, how get this fancy AI technology get managed from an infrastructure operational view? Is it possible to apply our lovely cloud native principals as well? What benefit’s both technologies could bring to each other?
Let me take this questions and provide you a short journey through existing deployment models and use cases for AI software. On practical examples, we discuss what cloud/on-premise strategy we may need for applying it to our own infrastructure to get it to work from an enterprise perspective. I want to give an overview about infrastructure requirements and technologies, what could be beneficial or limiting your AI use cases in an enterprise environment. An interactive Demo will give you some insides, what approaches I got already working for real.
Securing your Kubernetes cluster_ a step-by-step guide to success !KatiaHIMEUR1
Today, after several years of existence, an extremely active community and an ultra-dynamic ecosystem, Kubernetes has established itself as the de facto standard in container orchestration. Thanks to a wide range of managed services, it has never been so easy to set up a ready-to-use Kubernetes cluster.
However, this ease of use means that the subject of security in Kubernetes is often left for later, or even neglected. This exposes companies to significant risks.
In this talk, I'll show you step-by-step how to secure your Kubernetes cluster for greater peace of mind and reliability.
2. Statistical Techniques
Table of Contents
1.0 WHAT IS INFERENTIAL STATISTICS?.................................................................................................3
2.0 BRIEF TIMELINE OF INFERENTIAL STATISTICS .............................................................................4
3.0 TEST OF WHAT? ..........................................................................................................................................6
3.1 HYPOTHESIS – INTRODUCTION ...............................................................................................6
3.1.2 ERRORS IN SAMPLING.................................................................................................7
3.1.3 STUDENT’s T-TEST ........................................................................................................9
3.1.4 CHI-SQUARE TEST.......................................................................................................10
3.2 REGRESSION? ...............................................................................................................................12
3.2.1 REGRESSION MODELS...............................................................................................12
3.2.2 SCATTER-PLOTS ..........................................................................................................12
3.2.3 REGRESSION EQUATION ..........................................................................................12
3.2.4 REGRESSION INTERPRETATION............................................................................15
3.2.5 R SQUARRED .................................................................................................................15
4.0 BIBLIOGRAPHY.........................................................................................................................................16
Term paper - Inferential Statistics 2
3. Statistical Techniques
1.0 WHAT IS INFERENTIAL STATISTICS?
The vital key to the difference between descriptive and inferential statistics are the capitalized words
in the description: CAN DESCRIBE, COULD NOT CONCLUDE, AND REPRESENTATIVE OF.
Descriptive statistics can only describe the actual sample you study. But to extend your conclusions to
a broader population, like all such classes, all workers, all women, you must use inferential statistics,
which means you have to be sure the sample you study is representative of the group you want to
generalize to.
Allow me to exemplify:
i. The study at the local mall and cannot be used to claim that what you find is valid for
all shoppers and all malls.
ii. Another example would be a study conducted on an intermediate college can’t claim
that what you find is valid for the colleges of all levels (i.e. General Population).
iii. Also visualize a survey conducted at a women's club that includes a majority of a
particular single ethnic group cannot claim that what you find is valid for women for all
ethnic groups.
As you can see, descriptive statistics are useful and serviceable if you don't need to extend your
results to whole segments of the population. But the social sciences tend to esteem studies that
give us more or less "universal" truths, or at least truths that apply to large segments of the
population, like all teenagers, all parents, all women, all perpetrators, all victims, or a fairly
large segment of such groups.
Leaving aside the theoretical and mechanical soundness of such an investigation for some kind
of broad conclusion, various statistical approaches are to be utilized if one aspires to
generalize. And the primary distinction is that of SAMPLING. One must choose a sample that
is REPRESENTATIVE OF THE GROUP TO WHICH YOU PLAN TO GENERALIZE.
To round up, Descriptive statistics are for describing data on the group you study, While
Inferential statistics are for generalizing your findings to a broader population group.
Term paper - Inferential Statistics 3
4. Statistical Techniques
2.0 BRIEF TIMELINE OF INFERENTIAL STATISTICS
1733 1733 - In the 1700s, it was Thomas Bayer who gave birth to the concept of inferential
statistics. The normal distribution was discovered in 1733 by a Huguenot refugee de Moivre
as an approximation to the binomial distribution when the number of trials is too large.
Today, not only do scientists but also many professions rely on statistics to understand
behaviour and ideally make predictions about what circumstances relate to or cause these
behaviours.
1796 Historical Note: In 1796, Adophe Quetelet investigated the characteristics of French
conscripts to determine the "average man." Florence Nightingale was so influenced by
Quetelet's work that she began collecting and analyzing medical records in the military
hospitals during the Crimean War. Based on her work hospitals began keeping accurate
records on their patients, to provide better follow-up care.
1894 1894 - At the inception of the social survey, research results were confronted with the
developments in inferential statistics. In 1894, Booth wrote The Aged Poor in England and
Wales: Conditions? In this volume Booth claimed that there was no relationship between the
ratio of welfare (out-of-doors relief) and workhouse relief (in-relief and the incidence of
poverty by parish (or poor law union).
1896 Dec 1896 - Walker died rather suddenly at the age of 56, just days after giving the address
opening the first meeting of ASA outside Boston—in Washington, DC in December 1896.
That meeting led to the founding of the Washington Statistical Society. His achievements in
developing major federal data systems, in promoting the organizational development of
statistics, and of bringing statistical ideas to a wide audience, left the field much richer than
he found it.
1899 1899 - Since inferential social statistics are primarily concerned with correlation and
regression. To prove this Yule published his paper on poverty in London in 1899, this
concern has occurred in a context of establishing causality. Often investigators seem to view
statistical modeling as being equivalent to a regression model. The reader is cautioned that
my critique of regression analysis is not necessarily equivalent to denying the value of
empirical research.
Term paper - Inferential Statistics 4
5. Statistical Techniques
1925 1925 – First, Sigmund Freud had developed a theory that self-explained the reasons for
aggression and juvenile criminal behaviours in terms of childhood experiences. Second, in
1925, RA Fisher published Statistical Methods for Research Workers in which he identified
an effective experimental paradigm that included control groups and inferential statistics.
Freud's theory and Fisher's paradigm provided a basis so that mental health professionals
could initiate studies to identify many mental behaviours
1930 IN 1930, THE YEAR the CH Stoelting Co. of Chicago published what was to be the largest-
ever catalog of psychological apparatus, there was virtually no use of inferential statistics in
psychology, in spite of the fact that William Sealey Cosset had long since presented the
T-test and Sir Ronald Fisher had presented the general logic of null hypothesis testing. Only
after Fisher's epochal introduction to analysis of variance procedures did psychologists even
notice the procedure.
1930 1930 - The fiducial argument, which Fisher produced in 1930, generated much controversy
and did not survive the death of its creator. Fisher created many terms in everyday use, eg
statistic and sampling distribution and so there are many references to his work on the
Words pages. Symbols in Statistics are his contributions to notation.
1935 1935 - In the two decades following the publication of Ronald Aylmer Fisher's Design of
Experiments in 1935, Fisher's link between experimental design and inferential statistics
became institutionalized in American experimental psychology.
1936 Apr 27, 1936 - . Pearson founded the journal Biometrics and was the editor of Annals of
Eugenics. Because of his fundamental work in the development of modern statistics, many
scholars today regard Pearson as the founder of 20th-century statistics. He died in
Coldharbour, England, on April 27, 1936.
1977 1977 - The youth violence prevention landscape has changed drastically in the last quarter
century. In 1977, Wright and Dixon published a review of “Juveniles delinquency
prevention program” reports. The results were disappointing. From approximately 6600
program abstracts, empirical data were available from only 96 . Of the 96 empirical reports,
only 9 used random assignment of subjects, inferential statistics, outcomes measure of
delinquency, and a follow-up period of at least six months. Of those 9, only 3 reported
positive outcomes, and these three were based on the three smallest sample sizes among the
9 reports. The authors concluded that the literature was low in both scientific and policy
utility. By contrast today dozens of summaries of research on prevention practices are
available.
Term paper - Inferential Statistics 5
6. Statistical Techniques
1981 Jun 3, 1981 - Education Practical Statistics for Educators An introduction to the basic ideas
of descriptive and inferential statistics as applied to the work of the classroom teachers
counselors and administrators In the public schools Emphasis Is upon practical applications
of statistics to problems.
1986 Dec 17, 1986 - Koop acknowleged that the proof of these smoker’s deaths was "inferential,
of course," based on analyses of statistics gathered in past studies, including several in
Japan, Hong Kong, Taiwan, Europe and the United States.
1995 Jan 1995 - A jury trial on compensatory damages was held in January 1995. Dannemiller
testified that the selection of the random sample met the standards of inferential statistics,
that the successful efforts to locate and obtain testimony from the claimants in the random
sample "were of the highest standards " in his profession, that the procedures followed
conformed to the standards of inferential statistics.
3.0 TEST OF WHAT?
Tests of significance are helpful in problems of generalization. A Chi-Square or a T-Test tells you the
probability that the results you found in the group under study represent the population of the chosen
group. It can be frequently observed, Chi-Square or a t-test gives you the probability that the results
found could have occurred by chance when there is really no relationship at all between the variables
you studied in the population.
A known method used in inferential statistics is estimation. In estimation, the sample is used to
estimate a parameter, and a confidence interval about the estimate is constructed. Other examples of
inferential statistics methods include
i. Hypothesis testing
ii. Linear regression
3.1 HYPOTHESIS – INTRODUCTION
Hyptothesis is a statement about the population parameter or about a population distribution. The testing of
hypothesisis conducted in two phases. In the first phase, a test is designed where we decide as to when can the
null hypothesis be rejected. In the second phase, the designed test is used to draw the conclusion. Hypothesis
testing is to test some hypothesis about parent population from which the sample is drawn.
DEFINITIONS
PARAMETER - The statistical constants of the population namely mean (µ) , variance are usually referred to
as parameters.
STATISTIC - Statistical measures computed from the sample observations alone namely mean X Variance S2
have been termed as Statistic.
Term paper - Inferential Statistics 6
7. Statistical Techniques
UNBIASED ESTMATE - A statistic t = t (X1, X2, …..Xn), a function of the sample values X1, X2,…….Xn is
an unbiased estimate of the population parameter 0, if E(t) = 0. In other words, if
E(Statistic) = Paramater, then statistic is said to be an unbiased estimate of the parameter.
SAMPLING DISTRIBUTION OF A STATISTIC - If we draw a sample of size n from a given finite population
of size N, then the total number of possible samples is /n!(N-n)! = K
STANDARD ERROR - The standard deviation of the sampling distribution of a statistic is known as it standard
error.
NULL HYPOTHESIS - A definite statement about the population parameter which is usually a hypothesis of
no difference is called Null Hypothesis an is usually denoted by Ho
ALTERNATIVE HYPOTHESIS - Any hypothesis which is complementary to the null hypothesis is called an
alternative hypothesis usually denoted by H1. For example, if we want to test the null hypothesis that the
population has a specified mean Mo (say) is Ho : µ - µo then the alternative hypothesis could be
a) H1 : µ ≠ µ o
b) H1 : µ > µ o
c) H1 : µ < µ o
3.1.1 PROCEDURE FOR TESTING OF HYPOTHESIS
Various steps in testing of a statistical hypothesis in a systematic manner :
1. Null hypothesis : Set up the null hypothesis H0
2. Alternative Hypothesis : Set up the alternative hypothesis H1. This will be enable us to decide whether
we have to use a single tailed(right or left) test of two-tailed test.
3. Level of Significance : To choose the appropriate level of significance (x)
4. Test Statistic : To compute the test statistic : Z = t-E(t)/S1E(t) , under Ho
5. Conclusion : We compare the computed value of Z with the significant value Z2, at the given level of
significance, if │z │ <z2 we say it not significant, it │z│ >z is then we say that it is significant and the
null hypothesis is rejected at level of significance.
3.1.2 ERRORS IN SAMPLING
The main objective in sampling theory is to draw valid inference about the population parameters on the basis
of the sample results. In practice, we decide to accept or reject the lot after examining a sample from it. As such
we are able to commit the following two types of errors :
TYPE 1 ERROR : Reject Ho when it is true,
TYPE II ERROR : Accept Ho when it is wrong, ie. Accept Ho when H1 is true
If we mention P(Accept Ho when it is wrong) = P(Accept Ho/H1) = β and
P(Reject Ho when it is true) = P(Reject Ho/H1) = x then 2 and β are called the sizes of type 1 error and type II
error, respectively. In practice, type I error amounts to rejecting a lot when it is good and type II error may be
Term paper - Inferential Statistics 7
8. Statistical Techniques
regarded as accepting the lot when it is bad. Thus P(Reject a lot when it is good) = α and P (Accept a lot when
it is bad) = β where α and β are referred to as producer’s risk and consumer’s risk respectively.
CRITICAL REGION
A region in the sample splace S which amounts to rejection of Ho is termed as critical region of rejection.
ONE – TAILED AND TWO-TAILED TESTS
Ho: µ > µ o (Right-tailed), the critical region lies entirely in the right tail
H1: µ < µ o (left-tailed), the critical region lies entirely in the left tail.
A test of statistical hypothesis where the alternative hypothesis is two – tailed tests such as Ho:µ=µ o against the
alternative hypothesis H1:µ=µ o isknown as two tailed test and in such a case the critical region is given by the
portion of the area lying on both tailsof the probability curve of the test statistic.
CRITICAL VALUE OR SIGNIFICANT VALUES
The value of test statistic which separates the critical (or rejection) region and the acceptance region is called
the critical value or significant value. It depends on :
1) The level of significance used, and
2) The alternative hypothesis, whether it is two-tailed of single-tailed
The standardized variable corresponding to the statistic t namely Z =
The value of z above under the null hypothesis is known as test statistic.
The critical value of the test statistic at level of significance 2 for a two-tailed test is given by Z, where Z is
determined by the equation : P(1Z1>Z o ) = α i.e., Zα is the value so that the total area of the critical region on
both tails is 2. Since normal probability curve is a symmetrical curve.
In case of a single-tail alternative, the critical value of Zα is determined so that total area to the right of it (for
right-tailed test) is α and for left-tailed test the total area to the left of (-Zα) is α
Thus the significant or critical value of Z for a single-tailed test (left or right) at level of significance α is same
as the critical value of Z for a two-tailed test at level of significance ‘α’. Please find below the critical values of
Z at commonly used levels of significance for both two-tailed and single-tailed tests
Critical Value Z2 LEVEL OF SIGNIFICANCE
1% 5% 10%
Two tailed test │Zα│ = 2.58 │Zα│ = 1.96 │Zα│ = 1.645
Right tailed test Zα = 2.33 Zα = 1.645 Zα = 1.28
Left tailed test Zα = 2.33 Zα = 1.645 Zα = 1.28
TEST OF SIGNIFICANCE OF A SINGLE MEAN
If X1, X2, …….Xn, in a random sample of size n from a normal population with mean M and variance 2, then
the sample mean is distributed normally with mean M and variance .
Term paper - Inferential Statistics 8
9. Statistical Techniques
Null Hypothesis, Ho - The sample has been drawn from a population with mean M and variance , ie there is no
significance difference between the sample mean(X) and population mean(M), the test statistic (for large
samples), is Z =
If the population Standard Deviation is unknown, then we use its estimate provided by the sample variance
given by (for large samples)
TEST OF SIGNIFICANCE FOR DIFFERENCE OF MEANS
The mean of random sample of size n, from a population with Mean M, and Variance and let be the mean of an
independent random sample of size n2 from another population with mean M2 and variance ? then, since
sample size are large.
TEST OF SIGNIFICANCE FOR THE DIFFERENCE OF STANDARD DEVIATION
If S1 and S2 are the standard deviation of two independent samples, then under null hypothesis, Ho : 1= 2 i.e
the sample standard deviations don’t differ significantly.
1) (for large samples)
But in case of large samples, the S.E of the difference of the sample standard deviations is given
by
3.1.3 STUDENT’s T-TEST
The entire large sample theory was based on the application of “normal test”. However if the sample size n is
small, the distribution of the various statistics are far from normally and as such ‘normal test’ cannot be applied
if n is mall. In such cases exact sample tests, pioneered by W.S.Gosst(1908) who wrote under the pen name-of
student, and later on developed and extended by Prof.R.A.Fisher(1926) are used.
Applications Of T-Distribution
The t-distribution has a wide number of applications in statistics, and some of which are
1) To test if the sample mean( ) differs significantly from the hypothetical value µ of the population
mean.
2) To test the significance of the difference between two sample means.
3) To test the significance of an observed sample correlation and sample regression coefficient.
4) To test the significance of observed partial correlation coefficient.
T-Test For Single Mean
All hypothesis testing is done under the assumption the null hypothesis is true
Population Standard Deviation Known
If the population standard deviation, sigma, is known, then the population mean
has a normal distribution, and you will be using the z-score formula for sample means. The test
Term paper - Inferential Statistics 9
10. Statistical Techniques
statistic is the standard formula you've seen before. The critical value is obtained from the normal table, or
the bottom line from the t-table.
Population Standard Deviation Unknown
If the population standard deviation, sigma, is unknown, then the population mean has a
student's T-distribution, and you will be using the t-score formula for sample means. The
test statistic is very similar to that for the z-score, except that sigma has been replaced by s
and z has been replaced by t.
The critical value is obtained from the t-table. The degree of freedom for this test is n-1.
If you're performing a t-test where you found the statistics on the calculator (as opposed to being given them in
the problem), then use the VARS key to pull up the statistics in the calculation of the test statistic. This will
save you data entry and avoid round off errors.
General Pattern
Notice the general pattern of these test statistics is (observed - expected) / standard deviation.
3.1.4 CHI-SQUARE TEST
A chi-square test (also chi squared test or χ2 test) is any statistical hypothesis test in which the sampling
distribution of the test statistic is a chi-square distribution when the null hypothesis is true, or any in which this
is asymptotically true, meaning that the sampling distribution (if the null hypothesis is true) can be made to
approximate a chi-square distribution as closely as desired by making the sample size large enough.
Chi-Square Test In Contigency Table
CHI-SQUARE distribution is utlised to determine the critical value of the chi-square variate at various level of
significance.
Properties :
(1) The value of chi-square varies from 0 to α. (2) When each Oi = Ei, the value of chi-square is zero.
(3) Chi-square can never be negative
Term paper - Inferential Statistics 10
11. Statistical Techniques
CONTIGENCY TABLE : The test if independence of attributes when the frequencies are presented in a two way
table according to two attributes classified to various categories known as the contigency table.
Test of hypothesis in a contingency table.
A contingency is a rectangular array having rows and colums ascertaining to the categories of the attributes of
A & B. The null hypothesis : H0 : Two attributes are independent vs H1 : two attributes are dependant on each
other
.
Statistics X2 has (p-1) (q-1) d.f
Under Ho, the indepdendence of attributes, the expected frequency,
Eij = ith row total x jith column
N
= Ri x Cj
n
Decision : The calculated value compared with tabulated value of X2 for (P-1) (Q-1) d.f. & prefixed level of
significance α. Calculation X2 > reject Ho, if Calculation < X2 – tab – accept Ho.
CONTIGENCY TABLE OF ORDER 2X2
DIRECT FORMULAR FOR 2x2 = n(ad-bc)2
(a+b) (c+d) (a+c) (b+d) X2 has 1 d.f.
B1 B2
A1 A B a+b
A2 C (cell) D c+d
a+c B+d a+b+c+d = n
Calculation X2>X2α1, reject Ho
Calculation X2<x2α1, accept Ho
Term paper - Inferential Statistics 11
12. Statistical Techniques
3.2 REGRESSION?
Regression analysis is a method for determining the relationship between two variables. The regression
statistical skeleton is at the core of observed social and political science research. Regression analysis works as
a statistical substitute for controlled experiments, and can be used to make causal inferences.
3.2.1 REGRESSION MODELS
Researchers render verbal theories, hypothesis, even intuition into models. A model illustrates how and under
what circumstances two (or more) variables are linked. A regression model with a dependent variable and one
independent variable is known as a bi-variate regression model.
A regression model with a dependent variable and two or more independent variables and/or control variables is
known as a multivariate regression model.
Example: The dataset "Televisions, Doctors, and Smokers" contains, among other variables, the number of
smokers per television set and the number of smokers per physician for 50 countries.
3.2.2 SCATTER-PLOTS
The X axis normally depicts the values of the independent variable, while the Y axis represents the value of the
dependent variable.
Scatter-plots allow you to study the flow of the dots, or the relationship between the two variables
Scatter-plots allow political scientists to identify :
• Positive or negative relationships
• Monotonic or linear relationships
3.2.3 REGRESSION EQUATION
The linear equation is specified as follows:
Y = a + bX
Where Y = dependent variable
X = independent variable
a = constant (value of Y when X = 0)
b = is the slope of the regression line
“a” can be positive or negative. Referred to “a” as the intercept, “a” is the point at which the slope line passes
through the Y axis.
“b” (the slope coefficient) can be positive or negative. A positive coefficient denotes a positive relationship and
a negative coefficient denotes a negative relationship.
The significant interpretation of the slope coefficient depends on the variables involved, how they are coded
and the dimension of the variables. Larger coefficients may indicate a solid relationship, but not necessarily.
Term paper - Inferential Statistics 12
13. Statistical Techniques
The goal of regression analysis is to find an equation which “best fits” the data.
In regression, the equation is found in such a manner such that its graph
is a line that reduces the squared vertical distances amid the data points
and the lines drawn.
“d1” and “d2” illustrate the distances of observed data points from an
approximate regression line.
Regression analysis bring into play a mathematical equation that locates
the single line that reduces the squared distances from the line.
The standard regression equation is the same as the linear equation with
one exception: the error factor.
Y = α + βX + ε
Where Y = dependent variable
α = constant term
β = slope or regression coefficient
X = independent variable
ε = error term
This regression process is called ordinary least squares (OLS).
α (the constant term) interpreted the same as earlier
β (the regression coefficient) tells how much Y changes if X changes by one unit.
The regression coefficient indicates the inclination and strength of the relationship between the two quantitative
variables. The error (ε) denotes that observed data does not follow a tidy pattern that can be summarized with a
straight line.
A observation's score on Y can be split as the following two parts:
α + βX is due to the independent variable
ε is due to error
Observed value = Predicted value (α + βX) + error (ε)
The error is the difference between the predicted value of Y and the observed value of Y. This is known as the
residual.
Term paper - Inferential Statistics 13
14. Statistical Techniques
Example:
Lets take an example to clarify what we theoretically know:
In above data on the scatterplot:
Y (dependent variable) = telephone lines for 1,000 people
X (independent variable) = Infant mortality
We will utilize regression to look at the relationship connecting communication capacity (measured here as
telephone lines per capita) and infant mortality.
In this example, the intercept and regression coefficient are as follows:
α (or constant) = 121
Means that when X (infant deaths) is 0 deaths, there are 121 phone lines per 1,000 population.
β = -1.25
Means that when X (deaths) increases by 1, there is a predicted or estimated decrease of 1.25 phone lines.
Term paper - Inferential Statistics 14
15. Statistical Techniques
3.2.4 REGRESSION INTERPRETATION
These computations can be helpful because they allow us to make useful predictions about the data. For
example, an increase from 1 to 10 mortalities per 1,000 live births is related with a drop of 119.75 – 108.5 =
11.25 telephone lines.
Interpreting the meaning of a coefficient could be a bit fiddly. What does a coefficient of -1.25 mean?
Well, it means a negative association between infant mortality and phone lines.
It means for every extra infant death there is a reduction of 1.25 phone lines.
This is useful info, however is there a gauge that tells us how good we do predicting the observed values? Yes,
the measure is known as R-squared.
3.2.5 R SQUARRED
As stated earlier, there are two components of the total deviation from the mean, which is calculated by the
addition of squares (or total variance).The difference between the mean and the predicted value of Y, this is the
explained part of the deviation, or (Regression Sum of Squares).
The second component is the residual sum of squares (Residual Sum of Squares), which measures prediction
errors. The is the unexplained part of the deviation.
Total SS = Regression SS + Residual SS
In other words, the total sum of squares is the sum of the regression sum of squares and the residual sum of
squares.
R2 = Regression SS/TSS
The more variance the regression model explains, the higher the R2.
Term paper - Inferential Statistics 15
16. Statistical Techniques
4.0 BIBLIOGRAPHY
1. Inferential statistics Timeline:
http://www.google.ae/search?q=inferential+statistics&hl=en&tbo=1&rls=com.microsoft:en-
us:IE-SearchBox&output=search&source=lnt&tbs=tl:1&sa=X&ei=HMsFTq-
yKInIrQej2LSmDA&ved=0CBEQpwUoAw&biw=1366&bih=596 [Online]. [Accessed: 23th
June 2011].
2. Handbook of Injury and Violence Prevention By Lynda S. Doll, E. N. Haas Chapter 9.3 – Brief
history of youth violence prevention efforts, pg#159
Term paper - Inferential Statistics 16