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Extracted from:
http://www.trentu.ca/economics/220/Chapt3_overheads.doc
Variance
Defined: the average squared deviation from the mean.
Computed differently in population than in sample.
N
Population Variance:
2 
 ( X i  ) 2
i 1
N
n
Sample Variance:
s2 
 ( X i X )2
i 1
n 1
Example of calculation of sample variance:
Observation Deviation from Mean Squared Deviation
3
-1.5
2.25
4
-0.5
0.25
5
0.5
0.25
6
1.5
2.25
Total
5
Therefore sample variance = 5/3
Most frequently used measure of variation/dispersion …
STANDARD DEVIATION - square root of variance
In Population
In Sample
  2
s  s2
Chapter 3 -
1
Data A
11 12 13 14 15 16 17 18 19 20 21
Mean = 15.5
s = 3.338
Data B
11 12 13 14 15 16 17 18 19 20
21
Mean = 15.5
s = .9258
Data C
11 12 13 14 15 16 17 18 19 20 21
Mean = 15.5
s = 4.57
The magnitude of the Standard Deviation is meaningful.
Standard Deviation uses original units of measurement.
Value of standard deviation interpreted using the Empirical
Rule: If the data are fairly symmetric about the mean (i.e.,
histogram is bell-shaped), then the interval
  1
contains approximately 68% of the observations
  2
contains approximately 95% of the observations
  3
contains approximately 99% of the observations
Ex. Suppose final grades in class of 150 statistics students are
distributed in a symmetric manner about the mean, with μ = 72
and σ = 9 . Does this indicate a wide variation in grades?
In order to capture 68% of final grades, we require a range from
72 – 9 = 63
to 72 + 9 = 81
and 95% of students will have grades between 54 and 90.
Chapter 3 -
2
Measures of Shape
Measures of skewness indicate shape of distribution.
Left-Skewed
Mean < Median < Mode
Symmetric
Mean = Median =Mode
Right-Skewed
Mode < Median < Mean
Chapter 3 -
3
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