Reading 5b: Continuous Random Variables
The probability density function f(x) of a continuous random variable is the analogue of the probability mass function p(x) of a discrete random variable. Here are two important differences: 1. Unlike p(x), the pdf f(x) is not a probability. You have to integrate it to get proba bility. (See section 4.2 below.) 2.
Discrete, Variable, Random, Random variables, Discrete random variables
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