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In the treatment of the mathematical expection of a real random variable X , we note that the mean value locates the center of the probability mass distribution induced by X on the real line. In this unit, we examine how expectation may be used for further characterizationof the distribution for X . In particular, we deal with the concept of variance and its square root the standard deviation . In subsequent units, we show how it may be used to characterize the distribution for a pair considered jointly with the concepts covariance , and linear regression
Location of the center of mass for a distribution is important, but provides limited information. Two markedly different random variables may have the same mean value.It would be helpful to have a measure of the spread of the probability mass about the mean. Among the possibilities, the variance and its square root, the standard deviation,have been found particularly useful.
Definition . The variance of a random variable X is the mean square of its variation about the mean value:
The standard deviation for X is the positive square root σ X of the variance.
Basic patterns for variance
Since variance is the expectation of a function of the random variable X , we utilize properties of expectation in computations. In addition, we find it expedient to identifyseveral patterns for variance which are frequently useful in performing calculations. For one thing, while the variance is defined as , this is usually not the most convenient form for computation. The result quoted above gives an alternate expression.
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