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The vine copula method for representing high dimensional dependent distributions: application to continuous belief nets

机译:表示高维依赖分布的藤蔓copula方法:在连续信念网中的应用

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High dimensional probabilistic models are often formulated as belief nets (BNs), that is, as directed acyclic graphs with nodes representing random variables and arcs representing "influence". BN's are conditioned on incoming information to support probabilistic inference in expert system applications. For continuous random variables, an adequate theory of BN's exists only for the joint normal distribution. In general, an arbitrary correlation matrix is not compatible with arbitrary marginals, and conditioning is quite intractable. Transforming to normals is unable to reproduce exactly a specified rank correlation matrix. We show that a continuous belief net can be represented as a regular vine, where an arc from node i to j is associated with a (conditional) rank correlation between i and j. Using the elliptical copula and the partial correlation transformation properties, it is very easy to condition the distribution on the value of any node, and hence update the BN.
机译:高维概率模型通常被公式化为信念网(BN),也就是定向无环图,其中节点表示随机变量,而圆弧表示“影响力”。 BN以传入的信息为条件,以支持专家系统应用程序中的概率推断。对于连续随机变量,仅对联合正态分布存在适当的BN理论。通常,任意相关矩阵与任意边际不兼容,条件很难处理。转换为法线无法精确地再现指定的秩相关矩阵。我们表明,连续的信念网可以表示为规则的藤蔓,其中从节点i到j的弧与i和j之间的(条件)等级相关。使用椭圆copula和偏相关变换属性,可以很容易地根据任何节点的值来调节分布,从而更新BN。

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