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(CI1)
(CI2)
(CI3)
(CI4)
As an example of the kinds of argument needed to verify these equivalences, we show the equivalence of (CI1) and (CI2) .
Use of property (CE8) shows that (CI2) and (CI3) are equivalent. Now just as (CI1) extends to (CI5) , so also (CI3) is equivalent to
(CI6)
Property (CI6) provides an important interpretation of conditional independence:
is the best mean-square estimator for , given knowledge of Z . The condition implies that additional knowledge about Y does not modify that best estimate. This interpretation is often the most useful as a modeling assumption.
Similarly, property (CI4) is equivalent to
(CI8)
Property (CI7) is an alternate way of expressing (CI6) . Property (CI9) is just a convenient way of expressing the other conditions.
The additional properties in Appendix G are useful in a variety of contexts, particularly in establishing properties of Markov systems. We refer to them as needed.
In the classical approach to statistics, a fundamental problem is to obtain information about the population distribution from the distribution in a simplerandom sample. There is an inherent difficulty with this approach. Suppose it is desired to determine the population mean μ . Now μ is an unknown quantity about which there is uncertainty. However, since it is a constant, we cannotassign a probability such as . This has no meaning.
The Bayesian approach makes a fundamental change of viewpoint. Since the population mean is a quantity about which there is uncertainty, it is modeled as a random variable whose value is to be determined by experiment. In this view, the population distribution is conceived as randomly selected from a class of suchdistributions. One way of expressing this idea is to refer to a state of nature . The population distribution has been “selected by nature” from a class of distributions. The mean value is thus a random variable whose value is determined by this selection. Toimplement this point of view, we assume
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