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Evaluating Abductive Hypotheses using an EM Algorithm on BDDs

机译:在BDD上使用EM算法评估绑架假设

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Abductive inference is an important AI reasoning technique to find explanations of observations, and has recently been applied to scientific discovery. To find best hypotheses among many logically possible hypotheses, we need to evaluate hypotheses obtained from the process of hypothesis generation. We propose an abductive inference architecture combined with an EM algorithm working on binary decision diagrams (BDDs). This work opens a way of applying BDDs to compress multiple hypotheses and to select most probable ones from them. An implemented system has been applied to inference of inhibition in metabolic pathways in the domain of systems biology.
机译:绑架推理是一个重要的AI推理技术,可以找到观察的解释,最近已被应用于科学发现。为了在许多逻辑上可能的假设中找到最佳假设,我们需要评估从假说生成过程中获得的假设。我们提出了一个绑架推理架构与工作在二进制决策图(BDD)上工作的EM算法相结合。这项工作开辟了一种应用BDD来压缩多个假设并从中选择最可能的方法。已经应用的系统应用于系统生物结构领域的代谢途径中抑制的推理。

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