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Contextualized Possibilistic Networks with Temporal Framework for Knowledge Base Reliability Improvement

机译:具有知识库可靠性改进的时间框架的上下文化可能性网络

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Possibilistic abductive reasoning is particularly suited for diagnostic problem solving affected by uncertainty. Being a Knowledge-Based approach, it requires a Knowledge Base consisting in a map of causal dependencies between failures (or anomalies) and their effects (symptoms). Possibilistic Causal Networks are an effective formalism for knowledge representation within this applicative field, but are affected by different issues. This paper is focused on the importance of a proper management of explicit contextual information and of the addition of a temporal framework to traditional Possibilistic Causal Networks for the improvement of diagnostic process performances. The necessary modifications to the knowledge representation formalism and to the learning approach are presented together with a brief description of an applicative test case for the concepts here discussed.
机译:可能主义的绑架推理特别适用于受不确定性影响的诊断问题。作为一种基于知识的方法,它需要一个知识库,其包括在故障(或异常)之间的因果依赖性的地图和它们的效果(症状)。可能的因果网络是该应用领域内知识代表的有效形式主义,但受到不同问题的影响。本文重点关注对明确的上下文信息的适当管理的重要性,以及对传统可能主义因果网络的增加,以改善诊断过程性能。对知识表示形式主义和学习方法的必要修改,并在此讨论的概念的简要说明中介绍。

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