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1 Thursday, October 23, 2014
Posttest day 3 
1. Central Tendency .... 
Is used to talk about the central point in the distribution of values 
in the data. 
The measure of central tendency which reports the most 
frequently obtained score in the data. 
The score which is at the center of the distribution. Half the 
scores are above the median and half are below it. 
2. Mode is..... 
3. Median is... 
4. Mean is.... 
2 
The arithmetic average of all scores in a data set.
Measures of Central Tendency 
• Mean: arithmetic average of 
all scores in a distribution 
• Median: the point at which 
exactly half of the scores in 
a distribution are below & 
half are above 
• Mode: most frequently 
occurring score(s)
Normal Curve 
Objectives 
1.Introduce the Normal Distribution 
2.Properties of the Standard Normal 
Distribution 
3.The bell-shaped distribution 
4.Z-scores 
5.T-scores 
10
Normal Distribution 
 For years, scientists have noted that many 
variables in the behavioural and physical 
sciences are distributed in a bell shape. 
These variables are normally distributed in 
the population, and their graphic 
representation is referred to as the normal 
curve or a bell-shaped distribution 
11
Normal Distribution 
 If there is no very extreme scores and if 
you have 30 or more observations, you 
may have a normal distribution. 
12
The beauty of the normal curve: 
No matter what Mean and SD are, the area 
between Mean - SD and Mean + SD is 
about 68%; the area between Mean - 2SD 
and Mean+2SD is about 95%; and the area 
between Mean - 3SD and Mean + 3SD is 
about 99.7%. Almost all values fall within 
3 standard deviations.
68-95-99.7 Rule 
68% of 
the data 
95% of the data 
99.7% of the data
Normal /bell-shaped curve
Properties of Normal /bell-shaped curve 
• It is a symmetrical distribution 
• Most of the scores tend to occur near the center 
– while more extreme scores on either side of the 
center become increasingly rare. 
– As the distance from the center increases, the 
frequency of scores decreases. 
• The mean, median, and mode are the same.
The normal distribution 
The normal distribution is actually a group of 
distribution, each determined by a mean and 
a standard deviation. 
 A normal distribution means that most of 
the scores cluster around the midpoint of the 
distribution, and the number of scores 
gradually decrease on either side of the 
midpoint. 
 The resulting polygon is a bell-shaped 
curve 
18
The normal distribution 
Why are normal distributions so 
important? 
Many dependent variables are 
commonly assumed to be normally 
distributed in the population 
If a variable is approximately normally 
distributed we can make inferences 
about values of that variable 
Example: Sampling distribution of the 
mean 
19
Key Areas under the Curve 
 For normal 
distributions 
+ 1 SD ~ 68% 
+ 2 SD ~ 95% 
+ 3 SD ~ 99.9%
Normal /bell-shaped curve
Skewed Distribution 
Negative Skew Positive skew 
 Test items were easy. 
 Testees performed well. 
 The score are far from 
zero. 
 Test items were difficult. 
 Testees performed poorly. 
 The scores are near zero.
The 68/95/99.7 Rule 
24
The normal distribution 
Regardless of the exact shapes of the normal 
distributions, all share four characteristics: 
1. The curve is symmetrical around the vertical axis 
(half the scores are on the right side of the axis, 
and half the scores are on its left). 
2. The scores tend to cluster around the center (i.e., 
around the mean, or the vertical axis in the center). 
3. The mode, median, and mean have the same 
values. 
4. The curve has no boundaries on either side (the 
tails of the distribution are getting very close to the 
horizontal axis, but never quite touch it).* 
25 
Keep in mind that this is a theoretical model. In reality, the number of scores in a given distribution is 
finite, and certain scores are the highest and the lowest points of that distribution
Standard Scores 
Two types of scores: 
1.Individual scores (raw scores): scores are 
obtained by individuals on a certain measure. 
2.Group scores (mode, median, mean, range, 
variance, and standard deviation): are summary 
scores that are obtained for a group of scores. 
However, both types of scores are scale specific and cannot be 
used to compared scores on two different measures, each with 
its own mean and standard deviation 
26
To illustrate this point, let’s look at 
the following example. 
Suppose we want to compare the scores obtained by a 
student on two achievement tests, one in English and one 
in mathematics, Let’s say that the student received a score 
of 50 in English and 68 in mathematics. Because the two 
tests are different, we cannot conclude that the student 
performed better in mathematics than In English. Knowing 
the student’s score on each test will not allow you to 
determine on which test the student performed better. We 
do not know, for example, how many items were on each 
test, how difficult the test were, and how well the other 
students did on the tests. Simply put, the two tests are not 
comparable. 27
To illustrate this point, let’s look at 
the following example. 
To be able to compare scores from different tests, 
we can first convert them into standard scores. 
A standard scores is a derived scale score that 
expresses the distance of the original score from 
the mean in standard deviation units. 
 Once the scores are measured using the same 
units, they can then be compared to each other. 
Two types of standard scores are discussed in this 
slides : z scores and T scores. (T scores are not 
related to the t-test that will be discussed later). 28
Z-Scores 
 The z score is a type of standard score that 
indicates how many standard deviation units 
a given score is above or below the mean for 
that group. 
 The z scores create a scale with a mean of 
0 and a standard deviation of 1. 
 The shape of the z score distribution is the 
same as that of the raw scores used to 
calculate the z scores. 
29
 Standard Scores 
To compare scores on different 
measurement scales 
Z-Scores: the commonest score 
 Z-score properties 
How many scores above/below the mean 
The mean being set at zero 
The SD being set at one
Z-Scores 
 To convert a raw score to a z score, the raw 
score as well as the group mean and 
standard deviation are used. The conversion 
formula is: 
Where X= Raw score 
= Group mean 
SD= Group standard deviation 31
Table 1 below presents the raw scores of one student on four tests (social 
studies, language arts, mathematics, and reading). The table also displays 
the means and standard deviations of the student’s classmates on these 
test and shows the process for converting raw scores into z scores. 
Table 1 Student’s score, Class Means, Class standard Deviations, and z Scores on Four Tests 
Subject Raw 
Score 
Mean SD Z score 
Social studies 85 70 14 
Language arts 57 63 12 
Mathematics 65 72 16 
Reading 80 50 15 
32
T-score 
 The T score is another standard score measured 
on a scale with a mean of 50 and a SD of 10. 
 In order to calculate T scores, z scores have to be 
calculate first. 
 Using this standard score overcomes problems 
associated with z scores. All the scores on the T 
score are positive and range from 10 to 90. 
 Additionally, they can be reported in whole 
numbers instead of decimal points. 
 In order to convert scores from z to T, we multiply 
each z score by 10 and add a constant of 50 to that 
product. This is the formula:
 Standard Scores 
T-Score: A standard score whose 
distribution has a mean of 50 and a 
standard deviation of 10. 
Advantages of T-score 
Enabling us to work with whole numbers 
Avoiding describing subjects’ 
performances with negative numbers
 Standard Scores 
T-Score: A standard score whose 
distribution has a mean of 50 and a 
standard deviation of 10. 
Advantages of T-score 
Enabling us to work with whole numbers 
Avoiding describing subjects’ 
performances with negative numbers
Table 2 conversion of z Scores to T Scores 
Subject Z score T score 
Social studies +1.07 10(+1.07) + 50= 60.7 or 61 
Language arts -0.50 10 (-0.5) + 50 = 45.0 or 45 
Mathematics -0.44 10 (-0.44) + 50 = 45.6 or 46 
Reading +2.00 10 (+2.00) + 50 = 70.0 or 70 
36
References 
Main Sources 
Coolidge, F. L.2000. Statistics: A gentle introduction. London: Sage. 
Kranzler, G & Moursund, J .1999. Statistics for the terrified. (2nd ed.). Upper Saddle 
River, NJ: Prentice Hall. 
Butler Christopher.1985. Statistics in Linguistics. Oxford: Basil Blackwell. 
Hatch Evelyn & Hossein Farhady.1982. Research design and Statistics for Applied 
Linguistics. Massachusetts: Newbury House Publishers, Inc. 
Ravid Ruth.2011. Practical Statistics for Educators, fourth Ed. New York: Rowman & 
Littlefield Publisher, Inc. 
Quirk Thomas. 2012. Excel 2010 for Educational and Psychological Statistics: A Guide 
to Solving Practical Problem. New York: Springer. 
Other relevant sources 
Field, A. (2005). Discovering statistics using SPSS (2nd ed.). London: Sage. 
Moore, D. S. (2000). The basic practice of statistics (2nd ed.). New York: W. H. 
Freeman and Company. 
37 Thursday, October 23, 2014

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Day 4 normal curve and standard scores

  • 2. Posttest day 3 1. Central Tendency .... Is used to talk about the central point in the distribution of values in the data. The measure of central tendency which reports the most frequently obtained score in the data. The score which is at the center of the distribution. Half the scores are above the median and half are below it. 2. Mode is..... 3. Median is... 4. Mean is.... 2 The arithmetic average of all scores in a data set.
  • 3. Measures of Central Tendency • Mean: arithmetic average of all scores in a distribution • Median: the point at which exactly half of the scores in a distribution are below & half are above • Mode: most frequently occurring score(s)
  • 4.
  • 5.
  • 6.
  • 7.
  • 8.
  • 9.
  • 10. Normal Curve Objectives 1.Introduce the Normal Distribution 2.Properties of the Standard Normal Distribution 3.The bell-shaped distribution 4.Z-scores 5.T-scores 10
  • 11. Normal Distribution  For years, scientists have noted that many variables in the behavioural and physical sciences are distributed in a bell shape. These variables are normally distributed in the population, and their graphic representation is referred to as the normal curve or a bell-shaped distribution 11
  • 12. Normal Distribution  If there is no very extreme scores and if you have 30 or more observations, you may have a normal distribution. 12
  • 13. The beauty of the normal curve: No matter what Mean and SD are, the area between Mean - SD and Mean + SD is about 68%; the area between Mean - 2SD and Mean+2SD is about 95%; and the area between Mean - 3SD and Mean + 3SD is about 99.7%. Almost all values fall within 3 standard deviations.
  • 14. 68-95-99.7 Rule 68% of the data 95% of the data 99.7% of the data
  • 16. Properties of Normal /bell-shaped curve • It is a symmetrical distribution • Most of the scores tend to occur near the center – while more extreme scores on either side of the center become increasingly rare. – As the distance from the center increases, the frequency of scores decreases. • The mean, median, and mode are the same.
  • 17.
  • 18. The normal distribution The normal distribution is actually a group of distribution, each determined by a mean and a standard deviation.  A normal distribution means that most of the scores cluster around the midpoint of the distribution, and the number of scores gradually decrease on either side of the midpoint.  The resulting polygon is a bell-shaped curve 18
  • 19. The normal distribution Why are normal distributions so important? Many dependent variables are commonly assumed to be normally distributed in the population If a variable is approximately normally distributed we can make inferences about values of that variable Example: Sampling distribution of the mean 19
  • 20. Key Areas under the Curve  For normal distributions + 1 SD ~ 68% + 2 SD ~ 95% + 3 SD ~ 99.9%
  • 22.
  • 23. Skewed Distribution Negative Skew Positive skew  Test items were easy.  Testees performed well.  The score are far from zero.  Test items were difficult.  Testees performed poorly.  The scores are near zero.
  • 25. The normal distribution Regardless of the exact shapes of the normal distributions, all share four characteristics: 1. The curve is symmetrical around the vertical axis (half the scores are on the right side of the axis, and half the scores are on its left). 2. The scores tend to cluster around the center (i.e., around the mean, or the vertical axis in the center). 3. The mode, median, and mean have the same values. 4. The curve has no boundaries on either side (the tails of the distribution are getting very close to the horizontal axis, but never quite touch it).* 25 Keep in mind that this is a theoretical model. In reality, the number of scores in a given distribution is finite, and certain scores are the highest and the lowest points of that distribution
  • 26. Standard Scores Two types of scores: 1.Individual scores (raw scores): scores are obtained by individuals on a certain measure. 2.Group scores (mode, median, mean, range, variance, and standard deviation): are summary scores that are obtained for a group of scores. However, both types of scores are scale specific and cannot be used to compared scores on two different measures, each with its own mean and standard deviation 26
  • 27. To illustrate this point, let’s look at the following example. Suppose we want to compare the scores obtained by a student on two achievement tests, one in English and one in mathematics, Let’s say that the student received a score of 50 in English and 68 in mathematics. Because the two tests are different, we cannot conclude that the student performed better in mathematics than In English. Knowing the student’s score on each test will not allow you to determine on which test the student performed better. We do not know, for example, how many items were on each test, how difficult the test were, and how well the other students did on the tests. Simply put, the two tests are not comparable. 27
  • 28. To illustrate this point, let’s look at the following example. To be able to compare scores from different tests, we can first convert them into standard scores. A standard scores is a derived scale score that expresses the distance of the original score from the mean in standard deviation units.  Once the scores are measured using the same units, they can then be compared to each other. Two types of standard scores are discussed in this slides : z scores and T scores. (T scores are not related to the t-test that will be discussed later). 28
  • 29. Z-Scores  The z score is a type of standard score that indicates how many standard deviation units a given score is above or below the mean for that group.  The z scores create a scale with a mean of 0 and a standard deviation of 1.  The shape of the z score distribution is the same as that of the raw scores used to calculate the z scores. 29
  • 30.  Standard Scores To compare scores on different measurement scales Z-Scores: the commonest score  Z-score properties How many scores above/below the mean The mean being set at zero The SD being set at one
  • 31. Z-Scores  To convert a raw score to a z score, the raw score as well as the group mean and standard deviation are used. The conversion formula is: Where X= Raw score = Group mean SD= Group standard deviation 31
  • 32. Table 1 below presents the raw scores of one student on four tests (social studies, language arts, mathematics, and reading). The table also displays the means and standard deviations of the student’s classmates on these test and shows the process for converting raw scores into z scores. Table 1 Student’s score, Class Means, Class standard Deviations, and z Scores on Four Tests Subject Raw Score Mean SD Z score Social studies 85 70 14 Language arts 57 63 12 Mathematics 65 72 16 Reading 80 50 15 32
  • 33. T-score  The T score is another standard score measured on a scale with a mean of 50 and a SD of 10.  In order to calculate T scores, z scores have to be calculate first.  Using this standard score overcomes problems associated with z scores. All the scores on the T score are positive and range from 10 to 90.  Additionally, they can be reported in whole numbers instead of decimal points.  In order to convert scores from z to T, we multiply each z score by 10 and add a constant of 50 to that product. This is the formula:
  • 34.  Standard Scores T-Score: A standard score whose distribution has a mean of 50 and a standard deviation of 10. Advantages of T-score Enabling us to work with whole numbers Avoiding describing subjects’ performances with negative numbers
  • 35.  Standard Scores T-Score: A standard score whose distribution has a mean of 50 and a standard deviation of 10. Advantages of T-score Enabling us to work with whole numbers Avoiding describing subjects’ performances with negative numbers
  • 36. Table 2 conversion of z Scores to T Scores Subject Z score T score Social studies +1.07 10(+1.07) + 50= 60.7 or 61 Language arts -0.50 10 (-0.5) + 50 = 45.0 or 45 Mathematics -0.44 10 (-0.44) + 50 = 45.6 or 46 Reading +2.00 10 (+2.00) + 50 = 70.0 or 70 36
  • 37. References Main Sources Coolidge, F. L.2000. Statistics: A gentle introduction. London: Sage. Kranzler, G & Moursund, J .1999. Statistics for the terrified. (2nd ed.). Upper Saddle River, NJ: Prentice Hall. Butler Christopher.1985. Statistics in Linguistics. Oxford: Basil Blackwell. Hatch Evelyn & Hossein Farhady.1982. Research design and Statistics for Applied Linguistics. Massachusetts: Newbury House Publishers, Inc. Ravid Ruth.2011. Practical Statistics for Educators, fourth Ed. New York: Rowman & Littlefield Publisher, Inc. Quirk Thomas. 2012. Excel 2010 for Educational and Psychological Statistics: A Guide to Solving Practical Problem. New York: Springer. Other relevant sources Field, A. (2005). Discovering statistics using SPSS (2nd ed.). London: Sage. Moore, D. S. (2000). The basic practice of statistics (2nd ed.). New York: W. H. Freeman and Company. 37 Thursday, October 23, 2014

Editor's Notes

  1. SAY: within 1 standard deviation either way of the mean within 2 standard deviations of the mean within 3 standard deviations either way of the mean WORKS FOR ALL NORMAL CURVES NO MATTER HOW SKINNY OR FAT