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On the Use of a Mixed Binary Join Tree for Exact Inference in Dynamic Directed Evidential Networks with Conditional Belief Functions

机译:具有条件置信函数的动态有向证据网络中混合二叉联接树用于精确推断的应用

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Dynamic directed evidential network with conditional belief functions (DDEVN) is a framework for reasoning under uncertainty over systems evolving in time. Based on the theory of belief function, the DDEVN allows to faithfully represent various forms of uncertainty.In this paper, we propose a new algorithm for inference in DDEVNs. We especially present a computational structure, namely the mixed binary join tree, which is appropriate for the exact inference in these networks.
机译:具有条件置信函数(DDEVN)的动态定向证据网络是在不确定的条件下对随时间演变的系统进行推理的框架。基于置信函数理论,DDEVN可以忠实地表示各种形式的不确定性。本文提出了一种新的DDEVN推理算法。我们特别提出了一种计算结构,即混合二进制联接树,它适合于这些网络中的精确推断。

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