Law of total variance Guide, Meaning , Facts, Information and Description
In probability theory, the law of total variance states that if X and Y are random variables on the same probability space, and the variance of X is finite, then
The nomenclature in this article's title parallels the phrase law of total probability. Some writers on probability call this the "conditional variance formula" or by other rather prosaic and unsuggestive names.
(The conditional expected value E( X | Y ) is a random variable in its own right, whose value depends on the value of Y. Notice that the conditional expected value of X given the event Y = y is a function of y (this is where adherence to the conventional rigidly case-sensitive notation of probability theory becomes important!). If we write E( X | Y = y) = g(y) then the random variable E( X | Y ) is just g(Y). Similar comments apply to the conditional variance.)
The law of total variance can be proved using the law of total expectation:
- var(X) = E(X2) − E(X)2
- = E(E(X2|Y)) − E(E(X|Y))2
- = E(var(X|Y)) + E(E(X|Y)2) − E(E(X|Y))2
- = E(var(X|Y)) + var(E(X|Y)).
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