Reading 5b: Continuous Random Variables
Continuous Random Variables and Probability Density Func tions. A continuous random variable takes a range of values, which may be finite or infinite in extent. Here are a few examples of ranges: [0, 1], [0, ∞), (−∞, ∞), [a, b]. Definition: A random variable X is continuous if there is a function f(x) such that for any c ≤ d we ...
Variable, Continuous, Probability, Random, Continuous random variables, Continuous random variables and probability, Continuous random
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