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Formulating description logic learning as an Inductive Logic Programming task

机译:制定描述逻辑学习作为归纳逻辑编程任务

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We describe an Inductive Logic Programming (ILP) approach to learning descriptions in Description Logics (DL) under uncertainty. The approach is based on implementing many-valued DL proofs as propositionalizations of the elementary DL constructs and then providing this implementation as background predicates for ILP. The proposed methodology is tested on a many-valued variation of eastbound-trains and Iris, two well known and studied Machine Learning datasets.
机译:我们描述了一种在不确定性下描述逻辑(DL)中学习描述的感应逻辑编程(ILP)方法。该方法是基于实现许多值DL证明作为基本DL构建体的命题,然后将该实施方式作为ILP的背景谓词提供。所提出的方法是对东行动列车和虹膜的多重变化,两个众所周知和学习的机器学习数据集进行了测试。

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