Random Variables and Distribution Functions
Introduction to the Science of Statistics Random Variables and Distribution Functions We often create new random variables via composition of functions:! 7!X(!) 7!f(X(!)) Thus, if X is a random variable, then so are X2, exp↵X, p X2 +1, tan2 X, bXc and so on. The last of these, rounding down X to the nearest integer, is called the floor function.
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