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Supervised Learning of Term Similarities

机译:监督学期相似之处

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摘要

In this paper we present a method for the automatic discovery and tuning of term similarities. The method is based on the automatic extraction of significant patterns in which terms tend to appear. Beside that, we use lexical and functional similarities between terms to define a hybrid similarity measure as a linear combination of the three similarities. We then present a genetic algorithm approach to supervised learning of parameters that are used in this linear combination. We used a domain specific ontology to evaluate the generated similarity measures and set the direction of their convergence. The approach has been tested and evaluated in the domain of molecular biology.
机译:在本文中,我们提出了一种自动发现和调整术语相似性的方法。该方法基于自动提取显着的模式,从而趋于出现的术语。除此之外,我们在术语之间使用词汇和功能相似度来定义混合相似度措施作为三个相似之处的线性组合。然后,我们提出了一种遗传算法方法来监督该线性组合中使用的参数的学习。我们使用域特定的本体来评估生成的相似度测量并设置其融合的方向。该方法已经在分子生物学结构领域进行了测试和评估。

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