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Finding the Semantic Relationship Between Wikipedia Articles Based on a Useful Entry Relationship

机译:基于有用的入境关系找到维基百科文章的语义关系

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摘要

>Wikipedia is the largest online Internet encyclopedia, and everyone can create and edit different articles. On the one hand, because it contains huge amounts of articles and there are many different language versions, it often faces synonymous and polysemy problems. On the other hand, since some of the similar Wikipedia articles may have the same topic of discussion, it needs a suitable way to identify effectively the semantic relationships between articles. This paper first uses three well-known semantic analysis models LSA, PLSA, and LDA as evaluation benchmarks. Then, it uses the entry relationship between Wikipedia articles to design its model. According to the experimental results and analysis, its model has high performance and low cost characteristics compared with other models. The advantages of its model are as follows: (1) it is a good model for finding the semantic relationships between Wikipedia articles; (2) it is suitable for dealing with huge amounts of documentation.
机译:>维基百科是最大的在线互联网百科全书,每个人都可以创建和编辑不同的文章。一方面,由于它包含大量文章,并且有许多不同的语言版本,它通常面临同义词和多义音质。另一方面,由于一些类似的维基百科文章可能具有相同的讨论主题,因此需要一种合适的方式来识别物品之间的语义关系。本文首先使用了三种着名的语义分析模型LSA,PLSA和LDA作为评估基准。然后,它使用维基百科文章之间的入口关系来设计其模型。根据实验结果和分析,与其他型号相比,其模型具有高性能和低成本特性。其型号的优点如下:(1)它是寻找维基百科文章之间的语义关系的良好模型; (2)适用于处理大量文档。

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