通过从形式概念格中查找同义词集来扩展各种同义词库

Q4 Computer Science
Madori Ikeda, Akihiro Yamamoto
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引用次数: 1

摘要

在本文中,我们用一种方法解决了多种词库的扩展问题。当识别未注册的术语时,应扩展词典。各种辞典是可用的,每一个都是根据一个独特的设计原则构造的。我们将一个词库的扩展形式化为机器学习中的单个分类问题,目标是解决不同的分类问题。将现有的分类方法应用到每个同义词典是耗时的,特别是如果许多同义词典必须扩展。因此,我们提出了一种方法来减少扩展多个同义词典所需的时间。在该方法中,我们首先利用语料库中术语的句法信息,基于形式概念分析,生成不含同义词库的术语聚类,作为同义词集的候选词。可靠的语法分析器易于使用;因此,对于许多术语,语法信息比语义信息更容易获得。有了语法信息,对于每个同义词库和所有未注册的术语,我们可以快速搜索候选聚类以获得正确的同义词集,从而实现快速分类。实验结果表明,该方法的分类速度比现有方法快,分类精度相当。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Extending Various Thesauri by Finding Synonym Sets from a Formal Concept Lattice
In this paper, we solve the problem of extending various thesauri using a single method. Thesauri should be extended when unregistered terms are identified. Various thesauri are available, each of which is constructed according to a unique design principle. We formalise the extension of one thesaurus as a single classification problem in machine learning, with the goal of solving different classification problems. Applying existing classification methods to each thesaurus is time consuming, particularly if many thesauri must be extended. Thus, we propose a method to reduce the time required to extend multiple thesauri. In the proposed method, we first generate clusters of terms without the thesauri that are candidates for synonym sets based on formal concept analysis using the syntactic information of terms in a corpus. Reliable syntactic parsers are easy to use; thus, syntactic information is more available for many terms than semantic information. With syntactic information, for each thesaurus and for all unregistered terms, we can search candidate clusters quickly for a correct synonym set for fast classification. Experimental results demonstrate that the proposed method is faster than existing methods and classification accuracy is comparable.
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来源期刊
Journal of Information Processing
Journal of Information Processing Computer Science-Computer Science (all)
CiteScore
1.20
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