一种新的基于分割的聚类方法及通用文档摘要

R. Aliguliyev
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引用次数: 43

摘要

本文提出了从源文档中提取相关度最高的句子形成摘要的通用摘要方法。该方法基于句子聚类。这种方法的特殊之处在于生成的摘要可以尽可能多地包含不同主题的主要内容,同时减少其冗余。聚类方法尽可能地满足每个聚类内部的同质性和聚类之间的可分离性
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Partitioning-Based Clustering Method and Generic Document Summarization
This paper proposed the generic summarization method that extracts the most relevance sentences from the source document to form a summary. This method is based on clustering of sentences. The specificity of this approach is that the generated summary can contain the main contents of different topics as many as possible and reduce its redundancy at the same time. The clustering method satisfies as much homogeneity within each cluster as well as much separability between the clusters as possible
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