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Variability

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Variability Statistics means never having to say you're certain. Statistics - Chapter 4 * Variability The amount by which scores are dispersed or scattered in a ... – PowerPoint PPT presentation

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Title: Variability


1
Chapter 4
  • Variability

2
  • Statistics means never having to say you're
    certain.

3
Variability
  • The amount by which scores are dispersed or
    scattered in a distribution.
  • Page 74 graphs

4
Range
  • Difference between the largest and smallest
    scores.
  • Problem large groups may have large range

5
Variance and Standard Deviation
  • Standard Deviation - The square root of the
    variance.
  • Or
  • The square root of the mean of all the squared
    deviations from the mean!!???
  • The value of a standard deviation can NOT be
    negative.

6
Standard Deviation
  • A rough measure of the average (or standard)
    amount by which scores deviate on either side of
    their mean.

7
Progress Check 4.1 Page 80
  • Employees of Corporation A earn annual salaries
    described by a mean of 90,000 and a standard
    deviation of 10,000.
  • a. The majority of all salaries fall between what
    two values?
  • b. A small minority of salaries are less than
    what value?
  • c. A small minority of all salaries are more than
    what value?
  • c. Answer parts (a), (b), and (c) for Corporation
    Bs employees, who earn annual salaries described
    by a mean of 90,000 and a standard deviation of
    2,000.

8
Standard Deviation
  • Deviations from the mean.
  • The sum of all the deviations equals the
    variance.
  • To calculate the variance
  • The sum of squares equals the sum of all squared
    deviation scores (p. 83)

9
Sum of Squares
  • Calculation example of sample sum of squares (SS)
    using the computation formula (p. 83)
  • SSSX2 (SX)2
  • n

10
Standard Deviation
  • Calculation example of sample standard deviation
    using the computation formula (p. 86)
  • s vs2 v

SS2 n-1
11
Why n-1? (p88)
  • This applies the sample estimate to the variance
    rather then the population estimate.
  • If we use the population estimate we would
    underestimate the variability.
  • In other words, this allows a more conservative
    and accurate estimate of the variance within the
    sample.

12
Degrees of freedom
  • Degrees of freedom (df) refers to the number of
    values that are free to vary, given one or more
    mathematical restrictions, in a sample being used
    to estimate a population characteristic. (p. 90)

13
The value of the population mean mu (µ)
  • Most of the time the population mean is unknown
    so we use the value of the sample mean and the
    degrees of freedom (df) n-1.

14
Standard Deviation calculation (p88)
  1. Assign a value to n representing the number of X
    scores.
  2. Sum all X scores.
  3. Square the sum of all X scores.
  4. Square each X score.
  5. Sum all squared X scores.
  6. Substitute numbers into the formula to obtain the
    sum of squares, SS.
  7. Substitute numbers in the formula to obtain the
    sample variance, s2.
  8. Take the square root of s2 to obtain the sample
    standard deviation, s.

15
Qualitative data and variance
  • No measures of variability exist for qualitative
    data!
  • However, if the data can be ordered, then the
    variability can be described by identifying
    extreme scores (ranks).

16
Progress Check
  • Calculate the mean, median, mode, and standard
    deviation for the following height of students in
    inches.
  • 64, 61, 73, 70, 71, 75, 69, 60, 63, 71, 65, 62
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