Large scale similarity-based relation expansion

Masaaki Tsuchida, Stijn De Saeger, Kentaro Torisawa, M. Murata, Jun'ichi Kazama, Kow Kuroda, H. Ohwada
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引用次数: 2

Abstract

Recent advances in automatic knowledge acquisition methods make it possible to construct massive knowledge bases of semantic relations, containing information potentially unknown to their users. However for certain data mining tasks like finding potential causes of a disease or side-effects of a drug, where missing a small piece of information can have grave consequences, the coverage of automatically acquired knowledge bases is often insufficient. This paper explores the use of automatic hypothesis generation for expanding a knowledge base of semantic relations, using distributional word similarities obtained from a large Web corpus. If successful, such a method can drastically improve the coverage of automatically acquired semantic relations, at the expense of a slight reduction in accuracy. We show that large scale similarity-based relation expansion works quite well for this purpose. Using a 100 million Japanese Web page corpus as input, we could generate a substantial amount of new semantic relations that were not found in the input corpus but whose validity was confirmed in a much larger Web corpus, i.e., by using a commercial Web search engine.
基于相似性的大规模关系扩展
自动知识获取方法的最新进展使得构建海量的语义关系知识库成为可能,这些知识库包含了用户可能不知道的信息。然而,对于某些数据挖掘任务,如寻找疾病的潜在原因或药物的副作用,其中缺少一小部分信息可能会造成严重后果,自动获取的知识库的覆盖范围往往不够。本文利用从大型Web语料库中获得的分布词相似度,探索了使用自动假设生成来扩展语义关系知识库的方法。如果成功,这种方法可以大大提高自动获取的语义关系的覆盖范围,但代价是准确性略有降低。我们表明,大规模的基于相似性的关系扩展可以很好地实现这一目的。使用1亿个日语Web页面语料库作为输入,我们可以生成大量新的语义关系,这些关系在输入语料库中没有找到,但其有效性在更大的Web语料库中得到了证实,即通过使用商业Web搜索引擎。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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