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The properties in the table in Appendix E constitute a powerful and convenient resource for the use of mathematical expectation. These are properties of the abstract Lebesgueintegral, expressed in the notation for mathematical expectation.
In the development of additional properties, the four basic properties: (E1) Expectation of indicator functions, (E2) Linearity, (E3) Positivity; monotonicity, and (E4a) Monotone convergence play a foundational role. We utilize the properties in the table, as needed, often referring to them by the numbers assigned in the table.
In this section, we include a number of examples which illustrate the use of various properties. Some are theoretical examples, deriving additional properties or displaying the basis and structureof some in the table. Others apply these properties to facilitate computation
Probability may be expressed entirely in terms of expectation.
Thus, the three defining properties for a probability measure are satisfied.
Remark . There are treatments of probability which characterize mathematical expectation with properties (E0) through (E4a) , then define . Although such a development is quite feasible, it has not been widely adopted.
Suppose X is a real random variable and . Then
To see this, note that iff , so that iff .
Similarly, if , then . We thus have, by (E1) ,
INTERPRETATION. If we approximate the random variable X by a constant c , then for any ω the error of approximation is . The probability weighted average of the square of the error (often called the mean squared error ) is . This average squared error is smallest iff the approximating constant c is the mean value.
VERIFICATION
We expand and apply linearity to obtain
The last expression is a quadratic in c (since and are constants). The usual calculus treatment shows the expression has a minimum for . Substitution of this value for c shows the expression reduces to .
A number of inequalities are listed among the properties in the table. The basis for these inequalities is usually some standard analytical inequality on random variables to which themonotonicity property is applied. We illustrate with a derivation of the important Jensen's inequality.
If X is a real random variable and g is a convex function on an interval I which includes the range of X , then
VERIFICATION
The function g is convex on I iff for each there is a number such that
This means there is a line through such that the graph of g lies on or above it. If , then by monotonicity (this is the mean value property (E11) ). We may choose . If we designate the constant by c , we have
Recalling that is a constant, we take expectation of both sides, using linearity and monotonicity, to get
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