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Towards a New Model for Causal Reasoning in Expert Systems

机译:建立专家系统中因果推理的新模型

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This paper presents ideas for improved conditional probability assessment and improved expert systems consultations. It cautions that knowledge engineers may sometimes be imprecise when capturing causal information from experts: their elicitation questions may not distinguish between causal and correlational expertise. This paper shows why and how such models cannot support normative inferencing over conditional probabilities as if they were all based on frequencies in the long run. In some cases, these probabilities are instead causal theory-based judgments, and therefore are not traditional conditional probabilities. This paper argues that these should be processed as if they were causal strength probabilities or causal propensity probabilities. This paper reviews the literature on causal and probability judgment, and then presents a probabilistic inferencing model that integrates theory-based causal probabilities with frequency-based conditional probabilities. The paper also proposes guidelines for elicitation questions that knowledge engineers may use to avoid conflating causal theory-based judgment with frequency based judgment.
机译:本文提出了改进条件概率评估和改进专家系统咨询的想法。它警告说,知识工程师在从专家那里获取因果信息时有时可能不准确:他们的启发性问题可能无法区分因果和相关专业知识。本文说明了为什么这些模型以及为什么它们不能支持对条件概率的规范推断,就好像它们从长远来看都是基于频率一样。在某些情况下,这些概率是基于因果理论的判断,因此不是传统的条件概率。本文认为应将它们当作因果强度概率或因果倾向概率进行处理。本文回顾了有关因果和概率判断的文献,然后提出了一个概率推论模型,该模型将基于理论的因果概率与基于频率的条件概率相结合。本文还提出了引发问题的指南,知识工程师可以使用这些指南来避免将基于因果理论的判断与基于频率的判断相混淆。

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