Chapter 12 Conditional densities
is one of the few where a zero covariance (zero correlation) implies indepen-dence. The nal Example demonstrates yet another connection between Poisson processes and order statistics from a uniform distribution. The arguments make use of the obvious generalizations of joint densities and conditional densities to more than two dimensions. De nition.
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