一词多义和同义词的聚类校正

Zemin Qin, Hao Lian, Tieke He, B. Luo
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引用次数: 4

摘要

文档聚类(或文本聚类)是聚类分析在文本文档中的应用。它在自动文档组织、主题提取和快速信息检索或过滤等方面具有广泛的应用。同时,还存在许多挑战,如聚类的准确性有待提高。在这方面,聚类校正过程成为分析的对象。本文主要研究聚类过程中的一词多义问题。一词多义是指一个词或短语的歧义性,它可以(在不同的语境中)用来表达两种或更多不同的意思。然而,同义词是两个或多个单词之间的语义关系,这些单词(在给定的上下文中)可以表达相同的意思。这两个条件都会影响聚类的结果。为此,我们使用词袋模型来区分相同词的上下文,并使用word2vec对具有相似意思的词进行重新聚类。余弦相似度也用于度量这两个模型中两个非零向量之间的相似度。
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Cluster Correction on Polysemy and Synonymy
Document clustering (or text clustering) is the application of cluster analysis to textual documents. It has applications in automatic document organization, topic extraction and fast information retrieval or filtering. At the same time, there are still many challenges, for example the accuracy of clustering needs to be improved. In this regard, the process of cluster correction becomes the object of analysis. In this paper, we focus on the polysemy and synonymy issue in clustering process. Polysemy represents the ambiguity of an individual word or phrase that can be used (in different contexts) to express two or more different meanings. However, synonymy is the semantic relation that holds between two or more words that can (in a given context) express the same meaning. These two conditions will affect our results of clustering. In order that, we use bag of words model to distinguish contexts of the same words and word2vec to re-cluster word with the similar meaning. Cosine similarity is also use to measure of similarity between two nonzero vectors in these two model.
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