语义和句法词汇类中术语的无监督模糊隶属度估计

David Portnoy, P. Bock
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引用次数: 1

摘要

本研究的目的是在不使用任何其他语义或句法参考信息来源(如字典、词汇、语法规则等)的情况下,在不同抽象层次上发现英语单词之间的模糊语义和句法关系。将聚类算法应用于目标词和训练词子集组成的共现空间,其输出是一组语义或句法类。测试词与语义类和句法类之间的模糊关系(隶属系数)由定义的线性方程组的非负最小二乘解估计。利用218篇不相关小说的原始文本进行的实验取得了可喜的结果。预计更大和/或更狭窄的训练集将产生更好和更多样化的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unsupervised fuzzy-membership estimation of terms in semantic and syntactic lexical classes
The objective of this research is to discover fuzzy semantic and syntactic relationships among English words at various levels of abstraction without using any other sources of semantic or syntactical reference information (e.g. dictionaries, lexicons, grammar rules, etc...) An agglomerative clustering algorithm is applied to the co-occurrence space formed by subsets of target words and training words the output of which is a set of semantic or syntactic classes. The fuzzy-relationships (membership coefficients) between test words and the semantic and syntactic classes are estimated by the non-negative least-squares solution to the system of linear equations defined. Experiments using raw text in 218 unrelated novels have yielded promising results. It is expected that larger and/or more narrowly focused training sets would yield even better and more diverse results.
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