Rubab Hafeez, Sharifullah Khan, M. A. Abbas, F. Maqbool
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引用次数: 3
摘要
文档摘要解决了将信息以紧凑的形式呈现给读者的问题。文献中提出并评价了不同的文献总结方法。多文档摘要中常见的研究问题是句子的冗余和抽取;这些句子很重要,并且在语义上与其他句子有联系。将聚类层次聚类与潜在语义分析相结合;本文提出了一种新的多文档摘要方法,该方法测量句子之间的语义相似度,并通过仅保留高加权向量来降低维数。潜在狄利克雷分配模型用于识别结果摘要中的重要主题术语。我们使用了Recall Oriented Understudy for registration Evaluation (ROUGE)度量,使用2004年文档理解会议(DUC)数据集,对比其他最先进的技术来评估我们的系统。实验结果表明,该系统的性能有很大的提高,并且与其他先进技术相比,它可以更好地进行汇总。
Topic based Summarization of Multiple Documents using Semantic Analysis and Clustering
Document summarization addresses the problem of presenting the information in a compact form to the readers. Different approaches to summarize documents have been proposed and evaluated in literature. Common research problems in multi-document summarization are Redundancy and Extraction of sentences; that are important and semantically linked with other sentences. With the combination of agglomerative hierarchical clustering and Latent Semantic Analysis (LSA); which measures semantic similarity between sentences and reduces dimensions by preserving only highly weighted vectors, we propose a novel multi document summarization approach. Latent Dirichlet Allocation Model is used to identify important topic terms in the resultant summary. We have used Recall Oriented Understudy for Gisting Evaluation (ROUGE) metric to evaluate our system against other state-of-the art techniques using Document Understanding Conference (DUC) dataset 2004. Experimental results show that there is substantial performance improvement using our system and it makes better summary as compared to the other state-of-art techniques.