An Augmented-Based Approach for Compiling Min-based Possibilistic Causal Networks

R. Ayachi, N. B. Amor, S. Benferhat
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引用次数: 1

Abstract

This paper emphasizes on handling uncertain and causal information in a min-based possibility theory framework. More precisely, we focus on studying the representational point of view of interventions under a compilation framework. We propose two compilation-based inference algorithms for min-based possibilistic causal networks based on encoding the augmented network into a propositional theory and compiling this output in order to efficiently compute the effect of both observations and interventions.
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一种基于增强的基于最小的可能性因果网络编译方法
本文的重点是在基于最小的可能性理论框架下处理不确定性和因果信息。更准确地说,我们专注于研究汇编框架下干预措施的代表性观点。我们提出了两种基于编译的基于最小的可能性因果网络的推理算法,该算法基于将增强网络编码为命题理论并编译该输出,以便有效地计算观察和干预的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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