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Integrating New Refinement Operators in Terminological Decision Trees Learning

机译:在术语决策树学习中整合新的提炼算子

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The problem of predicting the membership w.r.t. a target concept for individuals of Semantic Web knowledge bases can be cast as a concept learning problem, whose goal is to induce intensional definitions describing the available examples. However, the models obtained through the methods borrowed from Inductive Logic Programming e.g. Terminological Decision Trees, may be affected by two crucial aspects: the refinement operators for specializing the concept description to be learned and the heuristics employed for selecting the most promising solution (i.e. the concept description that describes better the examples). In this paper, we started to investigate the effectiveness of Terminological Decision Tree and its evidential version when a refinement operator available in DL-Learner and modified heuristics are employed. The evaluation showed an improvement in terms of the predictiveness.
机译:预测会员资格的问题语义Web知识库的个人的目标概念可以转换为概念学习问题,其目的是引入描述可用示例的内涵定义。然而,通过从归纳逻辑编程中借用的方法获得的模型例如。术语决策树可能受到两个关键方面的影响:用于使要学习的概念描述专业化的细化运算符和用于选择最有希望的解决方案的启发式方法(即更好地描述示例的概念描述)。在本文中,我们开始研究术语学习决策树及其证据版本在使用DL-Learner中可用的细化运算符和改进的启发式算法时的有效性。评估显示出在可预测性方面的改进。

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