Title: Measures of Dispersion
1Measures of Dispersion
- Learning Objectives
- Explain what is meant by variability
- Describe, know when to use, interpret and
calculate range, variance, and standard deviation
2More Statistical Notation
- indicates the sum of squared Xs.
- Square ea score (22 22)
- Find sum of squared Xs 448
- indicates the squared sum of X.
- (22)2
3Measures of Variability
- describe the extent to which scores in a
distribution differ from each other.
A B C
0 8 6
2 7 6
6 6 6
10 5 6
12 4 6
X6 X6 X6
4A Chart Showing the Distance Between the
Locations of Scores in Three Distributions
5Variability
- Provides a quantitative measure of the degree to
which scores in a distribution are spread out or
clustered together - Figure 4.1
6Kurtosis
- Kurtosis based on size of a distributions tail.
- Leptokurtic thin or skinny dist
- Platykurtic flat
- Mesokurtic same kurtosis (normal distribution)
7Three Variations of the Normal Curve
8The Range, Semi-Interquartile Range, Variance,
and Standard Deviation
9The Range
- indicates the distance between the two most
extreme scores in a distribution - Crude measurement
- Used w/ nominal or ordinal data
- Range?difference btwn upper real limit of max
score and lower real limit of min score - Range highest score lowest score
10The Interquartile Range
- Covered by the middle 50 of the distribution
- Interquartile range Q3-Q1
- Semi-Interquartile Range
- Half of the interquartile range
11Variance and Standard Deviation
- Variance standard deviation communicate how
different the scores in a distribution are from
each other - We use the mean as our reference point since it
is at the center of the distribution and
calculate how spread out the scores are around
the mean
12The Population Variance and the Population
Standard Deviation
13Population Variance
- The population variance is the true or actual
variance of the population of scores.
14Population Standard Deviation
- The population standard deviation is the true or
actual standard deviation of the population of
scores.
15Describing the Sample Variance and the Sample
Standard Deviation
16Sample Variance
- The sample variance is the average of the squared
deviations of scores around the sample mean
17Sample Variance
- Variance is average of squared deviations
(usually large) squared units - Difficult to interpret
- Communicates relative variability
18Standard Deviation
- Measure of Var. that communicates the average
deviation - Square root of variance
19Sample Standard Deviation
- The sample standard deviation is the square root
of the average squared deviation of scores around
the sample mean.
20The Standard Deviation
- indicates
- average deviation from mean,
- consistency in scores,
- how far scores are spread out around mean
- larger the value of SD, the more the scores are
spread out around mean, and the wider the
distribution
21Normal Distribution and the Standard Deviation
22Normal Distribution and the Standard Deviation
- Approximately 34 of the scores in a perfect
normal distribution are between the mean and the
score that is one standard deviation from the
mean.
23The Estimated Population Variance and the
Estimated Population Standard Deviation
24Estimating the Population Variance and Standard
Deviation
- The sample variance is a biased
estimator of the population variance. - The sample standard deviation is a
biased estimator of the population standard
deviation.
25Estimated Population Variance
- By dividing the numerator of the sample variance
by N - 1, we have an unbiased estimator of the
population variance.
26Estimated Population Standard Deviation
- By dividing the numerator of the sample standard
deviation by N - 1, we have an unbiased estimator
of the population standard deviation.
27Unbiased Estimators
- is an unbiased estimator of
- is an unbiased estimator of
- The quantity N - 1 is called the degrees of
freedom - Number of scores in a sample that are free to
vary so that they reflect variability in pop
28Uses of , , and
- Use the sample variance and the sample
standard deviation to describe the
variability of a sample. - Use the estimated population variance and
the estimated population standard deviation
for inferential purposes when you need to
estimate the variability in the population.
29Organizational Chart of Descriptive and
Inferential Measures of Variability
30Always..
- Determine level of measurement
- Examine type of distribution
- Calculate mean
- Calculate variability
31American Psychological Association (5th ed)
- Mean
- M
- Standard Deviation
- SD
32Example
- Using the following data set, find
- The range,
- The semi-interquartile range,
- The sample variance and standard deviation,
- The estimated population variance standard
deviation
14 14 13 15 11 15
13 10 12 13 14 13
14 15 17 14 14 15
33Example Range
- The range is the largest value minus the smallest
value.
34ExampleSample Variance
35ExampleSample Standard Deviation
36ExampleEstimated Population Variance
37ExampleEstimated Population Standard Deviation