Discrete and Continuous Random Variables
the probability distribution function, f(x), for continuous R.V. X. The total area under f(x) is 1.0 a b c . 15.063 Summer 2003 1818 The Uniform Distribution a) What is the mean transit time? X is uniform on [a,b] if X is equally likely to take any value in the range from a to b.
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