Relation Between Variance and Standard Deviation
Analogous to the discrete case, we can define the expected value, variance, and standard deviation of a continuous random variable. These quantities have the same interpretation as in the discrete setting. The expectation of a random variable is a measure of the centre of the distribution, its mean value. The variance and standard deviation are measures of the horizontal spread or dispersion of the random variable.
Definition: Expected Value, Variance, and Standard Deviation of a Continuous Random Variable |
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The expected value of a continuous random variable X, with probability density function f(x), is the number given by
The variance of X is:
As in the discrete case, the standard deviation, σ, is the positive square root of the variance:
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Simple Example
The random variable X is given by the following PDF. Check that this is a valid PDF and calculate the standard deviation of X.
Solution
Part 1
To verify that f(x) is a valid PDF, we must check that it is everywhere nonnegative and that it integrates to 1.
We see that 2(1-x) = 2 - 2x ≥ 0 precisely when x ≤ 1; thus f(x) is everywhere nonnegative.
To check that f(x) has unit area under its graph, we calculate
So f(x) is indeed a valid PDF.
Part 2
To calculate the standard deviation of X, we must first find its variance. Calculating the variance of X requires its expected value:
Using this value, we compute the variance of X as follows
Therefore, the standard deviation of X is
An Alternative Formula for Variance
There is an alternative formula for the variance of a random variable that is less tedious than the above definition.
Alternate Formula for the Variance of a Continuous Random Variable |
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The variance of a continuous random variable X with PDF f(x) is the number given by |
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