Chapter 3. Multivariate Distributions.
3-1 Chapter 3. Multivariate Distributions. ... structure to include multivariate distributions, the probability distributions of pairs of random variables, triplets of random variables, and so forth. We will begin with the simplest such situation, that of pairs of ... describes a surface in 3-dimensional space, and the probability that (X;Y) ...
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