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Non-Parametric Continuous Bayesian Belief Nets with Expert Judgement

机译:具有专家判断力的非参数连续贝叶斯信念网

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摘要

This report introduces continuous belief nets using the vine -copulae modelling approach. Nodes are associated with continuous distributions, influences are associated with (conditional) rank correlations and are realized by (conditional) copulae. Any copula which represents (conditional) independence as zero (conditional) correlation can be used. We present an elicitation protocol based on (conditional) rank correlations and show how a unique joint distribution preserving the conditional independence properties of the Bayesian belief net can be determined, sampled and updated.
机译:本报告介绍了使用藤蔓-copulae建模方法的连续信念网。节点与连续分布关联,影响与(条件)等级关联关联,并通过(条件)关联来实现。可以使用将(条件)独立性表示为零(条件)相关性的任何语系。我们提出一种基于(条件)等级相关性的启发协议,并说明如何确定,采样和更新保存贝叶斯信念网的条件独立性的唯一联合分布。

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