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Math 217
Rules for Means and Variances (Section 4.4)
A. Definitions

If X is a discrete random variable then the mean (or "expected value," or "long-term
expected average value") of X is the weighted average value of the variable, where the
weights are given by the corresponding probability:  X   xi p( xi )

If X is a discrete random variable then the variance of X is the weighted squared deviation
from the mean, where each squared deviation is weighted by the corresponding
probability:  X2   ( xi   ) 2 p( xi ) .

The standard deviation of the random variable X is the square root of the variance:
 X   X2 .
B. Sums and differences of random variables

For any random variables X and Y, the mean of their sum is the sum of their means:
 X Y   X  Y .

Also, the mean of their difference is the difference of their means:  X Y   X  Y .

For independent random variables X and Y, the variance of their sum and the variance of
their difference are both equal to the sum of the original variances:
 X2 Y   X2   Y2 and
 X2 Y   X2   Y2

In general, if ρ is the correlation between X and Y, then a "correction" term has to be
included to account for the fact that X and Y are not independent:
 X2 Y   X2   Y2  2 X  Y and
 X2 Y   X2   Y2  2 X  Y

To find the standard deviation of a sum or difference, first find the variance using the
above formulas, then take the square root.
C. Linear Transformations

If a and b are constants determining a linear transformation aX + b, then the mean of
aX + b is the linear transformation of the original mean:  a bX  a  b X

Also, the variance of aX + b is b2 times the original variance (the a has no effect on the
variance):  a2bX  b 2 X2 .

Therefore, the standard deviation of aX + b is b times the original standard deviation:
 a bX  b X .