论因果信念网络的建模

I. Boukhris, Zied Elouedi, S. Benferhat
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引用次数: 2

摘要

因果关系用图形模型表示得简洁明了。在这些因果网络上,我们可以计算观察系统的自然行为和迫使某些变量取特定值的外部行为的同时效应。本文提出了一种替代的因果图模型,该模型在不确定环境下提供了更大的灵活性,并降低了存储复杂性,其中不确定性由信念分配表示,即所谓的带有条件信念的因果信念网络。实际上,在这种表示中,条件分布是由一个或多个原因定义的。为了计算该网络上的全局联合分布,我们还提出了一种允许信念均匀转移的真空扩展方法。
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On the modeling of causal belief networks
Causality is compactly and simply represented with graphical models. On these causal networks, we can compute the simultaneous effect of observing the natural behavior of the system and external actions forcing some variables to take specific values. This paper proposes an alternative causal graphical model offering more flexibility and reducing the storage complexity under an uncertain environment where the uncertainty is represented by belief assignments, the so-called causal belief network with conditional beliefs. Indeed, in this representation conditional distributions are defined for either one or more than one cause. To compute the global joint distribution on this network, we also propose a new method for the vacuous extension allowing a uniform transfer of beliefs.
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