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Math 1313
Section 7.3
1
Section 7.3 – Variance and Standard Deviation
The Variance of a random variable X is the measure of degree of dispersion,
or spread, of a probability distribution about its mean (i.e. how much on
average each of the values of X deviates from the mean.).
Note: A probability distribution with a small (large) spread about its mean
will have a small (large) variance.
Variance of a Random Variable X
Suppose a random variable has the probability distribution
x
x1
x2 …
xn
P(X=x)
p1
p2
…
pn
and expected value E(X) = µ . Then the variance of the random variable X is
Var( x) = p 1 ( x1 − µ ) 2 + p 2 ( x 2 − µ ) 2 + K + p n ( x n − µ ) 2
The following example each have a mean of 1.8 but the variance are not the
same:
Has mean of 1.8
Has mean of 1.8
3
2
2.5
1.5
2
1.5
Series1
1
Series1
1
0.5
0.5
0
0
1
2
3
4
5
1
2
3
4
5
Note: We square each since some may be negative.
Standard Deviation measures the same thing as the variance. The standard
deviation of a R.V. X is
σ =
Var( x) =
p1 (x1 − µ) 2 + p 2 (x 2 − µ ) 2 + K + p n (x n − µ ) 2
Math 1313
Section 7.3
2
Example 1: Compute the mean, variance and standard deviation of the
random variable X with probability distribution as follows:
X
P(X=x)
-3
2
5
0.4
0.3
0.3
Example 2: Find the variance of this probability distribution of the random
variable:
x
P(X = x)
-1
.15
0
2
4
.32
.29
.24
Given that the expected value is 1.39
Math 1313
Section 7.3
3
Example 3: This example should help you understand the meaning of the
variance. Rose is considering investing $10,000 in two mutual funds. The
anticipated returns from price appreciation and dividends (in hundreds of
dollars) are described by the following probability distributions:
Mutual Fund A
Mutual fund B
Earnings Probability
Earnings Probability
-4
0.2
-2
0.2
8
0.5
6
0.4
10
0.3
8
0.4
a. Compute the mean and for each mutual fund.
b. Which investment would provide the investor with the higher expected
return (the greater mean)?
c. Compute the variance for each probability distribution.
d. Which investment would the element of risk be less (that is, which
probability distribution has the smaller variance)?
Math 1313
Section 7.3
4
Chebychev’s Inequality
Let X be a random variable with expected value µ and standard deviation σ .
Then, the probability that a randomly chosen outcome of the experiment lies
1
between µ − kσ and µ + kσ is at least 1- 2 ; that is,
k
Let’s see what this is saying:
Example 4: A probability distribution has a mean 20 and a standard
deviation of 3. Use Chebychev’s Inequality to estimate the probability that an
outcome of the experiment lies between 12 and 28.
Example 5: A light bulb has an expected life of 200 hours and a standard
deviation of 2 hours. Use Chebychev’s Inequality to estimate the probability
that one of these light bulbs will last between 190 and 210 hours?
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