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The Variance of a Random Variable

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Title: The Variance of a Random Variable


1
The Variance of a Random Variable
  • Lecture 35
  • Section 7.5.1
  • Fri, Mar 26, 2004

2
The Variance of a Discrete Random Variable
  • Variance of a Discrete Random Variable The
    square of the standard deviation of that random
    variable.
  • The variance of X is denoted by
  • ?2 or Var(X)
  • The standard deviation of X is denoted by ?.

3
The Variance and Expected Values
  • The variance is the expected value of the squared
    deviations.
  • That agrees with the earlier notion of the
    average squared deviation.
  • Therefore,
  • Var(X) E((X µ)2).

4
Example of the Variance
  • Again, let X be the number of children in a
    household.

x P(X x)
0 0.10
1 0.30
2 0.40
3 0.20
5
Example of the Variance
  • Subtract the mean (1.70) from each value of X to
    get the deviations.

x P(X x) x µ
0 0.10 -1.7
1 0.30 -0.7
2 0.40 0.3
3 0.20 1.3
6
Example of the Variance
  • Square the deviations.

x P(X x) x µ (x µ)2
0 0.10 -1.7 2.89
1 0.30 -0.7 0.49
2 0.40 0.3 0.09
3 0.20 1.3 1.69
7
Example of the Variance
  • Multiply each squared deviation by its
    probability.

x P(X x) x µ (x µ)2 (x µ)2?P(X x)
0 0.10 -1.7 2.89 0.289
1 0.30 -0.7 0.49 0.147
2 0.40 0.3 0.09 0.036
3 0.20 1.3 1.69 0.338
8
Example of the Variance
  • Add up the products to get the variance.

x P(X x) x µ (x µ)2 (x µ)2?P(X x)
0 0.10 -1.7 2.89 0.289
1 0.30 -0.7 0.49 0.147
2 0.40 0.3 0.09 0.036
3 0.20 1.3 1.69 0.338
0.810 ?2
9
Example of the Variance
  • Add up the products to get the variance.

x P(X x) x µ (x µ)2 (x µ)2?P(X x)
0 0.10 -1.7 2.89 0.289
1 0.30 -0.7 0.49 0.147
2 0.40 0.3 0.09 0.036
3 0.20 1.3 1.69 0.338
0.810 ?2 0.9 ?
10
Exercise
  • Lets Return To Lets Do It! 7.23, p. 430.
  • The variance of Profit Indoors is
  • Var(Profit Indoors) 29.0
  • Compute the variance of Profit Outdoors.
  • Which setting (indoors or outdoors) exhibits the
    greater variability?

11
Alternate Formula for the Variance
  • It turns out that
  • Var(X) E(X2) (E(X))2.
  • That is, the variance of X is the expected value
    of the square of X minus the square of the
    expected value of X.
  • Of course, we could write this as
  • Var(X) E(X2) µ2.

12
Example of the Variance
  • One more time, let X be the number of children in
    a household.

x P(X x)
0 0.10
1 0.30
2 0.40
3 0.20
13
Example of the Variance
  • Square each value of X.

x P(X x) x2
0 0.10 0
1 0.30 1
2 0.40 4
3 0.20 9
14
Example of the Variance
  • Multiply each squared X by its probability.

x P(X x) x2 x2?P(X x)
0 0.10 0 0.00
1 0.30 1 0.30
2 0.40 4 1.60
3 0.20 9 1.80
15
Example of the Variance
  • Add up the products to get E(X2).

x P(X x) x2 x2?P(X x)
0 0.10 0 0.00
1 0.30 1 0.30
2 0.40 4 1.60
3 0.20 9 1.80
3.70 E(X2)
16
Example of the Variance
  • Then use E(X2) to compute the variance.
  • Var(X) E(X2) µ2
  • 3.70 (1.7)2
  • 3.70 2.89
  • 0.81.
  • It follows that ? ?0.81 0.9.

17
Exercise
  • Return once more to Lets Do It! 7.23, p. 430.
  • Use the alternate formula to compute the variance
    of Profit Indoors.

18
Means and Standard Deviations on the TI-83
  • Store the list of values of X in L1.
  • Store the list of probabilities of X in L2.
  • Select STAT gt CALC gt 1-Var Stats.
  • Press ENTER.
  • Enter L1, L2.
  • Press ENTER.
  • The list of statistics includes the mean and
    standard deviation of X.

19
Means and Standard Deviations on the TI-83
  • Let L1 0, 1, 2, 3.
  • Let L2 0.1, 0.3, 0.4, 0.2.
  • Compute the statistics.
  • Compute µ and ? for the Indoor and Outdoor
    distributions in Lets Do It! 7.23, p. 430.

20
Assignment
  • Page 442 Exercise 56.
  • Page 451 Exercises 91, 93, 94, 95, 96.
  • Find the variance and standard deviation.
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