使用复合相似度量进行分类学习

Mahmood Neshati, Ali Alijamaat, H. Abolhassani, Afshin Rahimi, Mehdi Hosseini
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引用次数: 18

摘要

分类学习是本体学习过程中的重要步骤之一。手工构建分类法是一项耗时且繁琐的任务。近年来,许多研究者对自动分类学习进行了研究,但生成的分类质量仍不理想。本文提出了一种新的复合相似测度。这种方法是基于知识贫乏和知识丰富的方法来寻找单词相似度。我们还使用机器学习技术(神经网络模型)对几种相似度方法进行组合。我们将该方法与简单的语法相似度度量方法进行了比较。我们的方法大大提高了自动生成分类法的精度和召回率。
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Taxonomy Learning Using Compound Similarity Measure
Taxonomy learning is one of the major steps in ontology learning process. Manual construction of taxonomies is a time-consuming and cumbersome task. Recently many researchers have focused on automatic taxonomy learning, but still quality of generated taxonomies is not satisfactory. In this paper we have proposed a new compound similarity measure. This measure is based on both knowledge poor and knowledge rich approaches to find word similarity. We also used Machine Learning Technique (Neural Network model) for combination of several similarity methods. We have compared our method with simple syntactic similarity measure. Our measure considerably improves the precision and recall of automatic generated taxonomies.
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