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Probabilistic Rule Learning

机译:概率规则学习

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Traditionally, rule learners have learned deterministic rules from deterministic data, that is, the rules have been expressed as logical statements and also the examples and their classification have been purely logical. We upgrade rule learning to a probabilistic setting, in which both the examples themselves as well as their classification can be probabilistic. The setting is incorporated in the probabilistic rule learner ProbFOIL, which combines the principles of the relational rule learner FOIL with the probabilistic Prolog, ProbLog. We report also on some experiments that demonstrate the utility of the approach.
机译:传统上,规则学习者是从确定性数据中学习确定性规则的,也就是说,规则已被表达为逻辑语句,并且示例及其分类也完全是逻辑上的。我们将规则学习升级为概率设置,在这种情况下,示例本身及其分类都可能是概率性的。该设置包含在概率规则学习器ProbFOIL中,该规则结合了关系规则学习器FOIL和概率Prolog ProbLog的原理。我们还将报告一些实验,以证明该方法的实用性。

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