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Published byBennett McCoy Modified over 6 years ago
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Cumulative distribution functions and expected values
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Cumulative distribution function of a continuous random variable
Whereas for a discrete random variable we sum probabilities up to a point x to obtain the cumulative distribution function , in the continuous case we integrate.
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Definition and properties of the cumulative distribution function
The CDF of a continuous random variable with density function f(x) is The function F(x) takes values in [0,1], i.e. , and is non-decreasing.
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Examples For X with pdf, the CDF is given by
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Angles corresponding to an imperfection on a tire
For this example, In general, for a uniform rv on [A,B],
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Using F(x) to compute probabilities
Let X be a continuous random variable with pdf f(x) and cdf F(X). Then for any number a, and for any two numbers a and b,
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Obtaining f(x) from F(x)
If X is a continuous rv with pdf f(x) and cdf F(x), then at every x at which the derivative exists, For ,
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Percentiles of a continuous distributon
Let 0<p<1. The (100p)th percentile of a rv, denoted by , is defined by The median is the 50th percentile. The text denotes the median by
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Median of a symmetric distribution
A continuous distribution whose pdf is symmetric has median equal to the point of symmetry.
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Expected values of continuous random variables
Expected values of continuous random variables are computed in a manner similar to the discrete case, with integrals replacing sums.
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Definition The expected value or mean of a continuous rv X with pdf f(x) is computed as For a function h(X),
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Definition of variance
The variance of a continuous random variable with pdf f(x) and mean value is The variance may also be computed using
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