基于解析树核的不显式特征枚举结合结构和语义信息的本体对齐

J. Son, Seong-Bae Park, Se-Young Park
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引用次数: 2

摘要

本体对齐存在两类主要问题。首先,用于本体对齐的特征通常是由专家定义的,但是一些关键特征很可能被排除在特征集中。其次,语义相似度和结构相似度通常是独立计算的,然后它们以一种特别的方式组合在一起,其中权重是启发式确定的。本文提出了一种改进的解析树内核(MPTK)来进行本体对齐。为了计算本体中实体之间的相似度,采用树的形式表示本体。在将本体转换为一组树之后,使用MPTK计算它们的相似度,而不需要显式枚举特征。在计算树与树之间的相似度时,采用近似字符串匹配,既能自然地反映树的结构信息,又能自然地反映树的语义信息。根据一系列标准数据集的实验,核方法优于其他结构相似的方法,如GMO。此外,该方法在本体对齐方面表现出了最先进的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Ontology Alignment Based on Parse Tree Kernel for Combining Structural and Semantic Information without Explicit Enumeration of Features
The ontology alignment has two kinds of major problems. First, the features used for ontology alignment are usually defined by experts, but it is highly possible for some critical features to be excluded from the feature set. Second, the semantic and the structural similarities are usually computed independently, and then they are combined in an ad-hoc way where the weights are determined heuristically. This paper proposes the modified parse tree kernel (MPTK) for ontology alignment. In order to compute the similarity between entities in the ontologies, a tree is adopted as a representation of an ontology. After transforming an ontology into a set of trees, their similarity is computed using MPTK without explicit enumeration of features. In computing the similarity between trees,the approximate string matching is adopted to naturally reflect not only the structural information but also the semantic information. According to a series of experiments with a standard data set, the kernel method outperforms other structural similarities such as GMO. In addition, the proposed method shows the state-of-the-art performance in the ontology alignment.
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