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Predicate invention-based specialization in Inductive Logic Programming

机译:基于谓词的基于谓词的归纳逻辑编程专业化

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摘要

Three relevant areas of interest in symbolic Machine Learning are incremental supervised learning, multistrategy learning and predicate invention. In many real-world tasks, new observations may point out the inadequacy of the learned model. In such a case, incremental approaches allow to adjust it, instead of learning a new model from scratch. Specifically, when a negative example is wrongly classified by a model, specialization refinement operators are needed. A powerful way to specialize a theory in Inductive Logic Programming is adding negated preconditions to concept definitions. This paper describes an empowered specialization operator that allows to introduce the negation of conjunctions of preconditions using predicate invention. An implementation of the operator is proposed, and experiments purposely devised to stress it prove that the proposed approach is correct and viable even under quite complex conditions.
机译:符号机器学习中三个重要的相关领域是增量监督学习,多策略学习和谓词发明。在许多现实世界中的任务中,新的观察可能会指出学习模型的不足。在这种情况下,增量方法可以对其进行调整,而不是从头开始学习新模型。具体而言,当否定示例被模型错误分类时,需要专业化细化算子。一种专门用于归纳逻辑编程的理论的有效方法是在概念定义中添加否定的前提条件。本文介绍了一种授权的专业化运算符,该运算符允许使用谓词发明引入前提条件的合取否定。提出了一种算子的实现方式,并有针对性地设计了实验来强调该算子,证明了所提出的方法即使在相当复杂的条件下也是正确且可行的。

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