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Content available remote A characterization of the bivariate wishart distribution
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We provide a characterization of the bivariate Wishart and normal-Wishart distributions. Assume that x = {x1,x} has a non-singular bivariate normal pdf f(x) = N (μ, W) with unknown mean vector fi and unknown precision matrix W. Let f(x)= f(x1)f(x2|x), where f(x1) = N{m1 1/ν1 and f(x2 | x1) = N{m2|1 + b12x1 l/ν2|1). Similarly, define {ν2, b21,m2, m1|2} using the factorization f(x)=f(x2)f(x1|x2)- Assume μ and W have a strictly positive joint pdf fμw(μW). Then fμw is a normal-Wishart pdf if and only if global independence holds, namely,…[formula] and local independence holds, namely, [formula] (where x* denotes the standardized r.v. x and stands for independence). We also characterize the bivariate pdfs that satisfy global independence alone. Such pdfs are termed hyper-Markov laws and they are used for a decomposable prior-to-posterior analysis of Bayesian networks.
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Content available remote Perfect tree-like Markovian distributions
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We show that if a strictly positive joint probability distribution for a set of binary variables factors according to a tree, then vertex separation represents all and only the independence relations encoded in the distribution. The same result is show to hold also for multivariate nondegenerate normal distributions. Our proof uses a new property of conditional independence that holds for these two classes of probabilisty distributions.
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