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A generic framework for a compilation-based inference in probabilistic and possibilistic networks

机译:概率网络和可能性网络中基于编译的推理的通用框架

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摘要

Probabilistic and possibilistic networks are important tools proposed for an efficient representation and analysis of uncertain information. The inference process has been studied in depth in these graphical models. We cite in particular compilation-based inference which has recently triggered the attention of several researchers. In this paper, we are interested in comparing this inference mechanism in the probabilistic and possibilistic frameworks in order to unveil common points and differences between these two settings. In fact, we will propose a generic framework supporting both Bayesian networks and possibilistic networks (product-based and min-based ones). The proposed comparative study points out that the inference process depends on the specificity of each framework, namely in the interpretation of the handled uncertainty degrees (probabilitypossibility) and appropriate operators (*min and +max).
机译:概率网络和可能性网络是为有效表示和分析不确定信息而提出的重要工具。在这些图形模型中对推理过程进行了深入研究。我们特别引用了基于编译的推理,该推理最近引起了一些研究人员的关注。在本文中,我们有兴趣在概率和可能性框架中比较此推理机制,以揭示这两种设置之间的共同点和差异。实际上,我们将提出一个支持贝叶斯网络和可能网络(基于产品的网络和基于最小的网络)的通用框架。拟议的比较研究指出,推理过程取决于每个框架的特异性,即在解释处理的不确定度(概率可能性)和适当的运算符(* min和+ max)时。

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