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Text summarization using Latent Semantic Analysis

机译:使用潜在语义分析的文本摘要

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摘要

Text summarization solves the problem of presenting the information needed by a user in a compact form. There are different approaches to creating well-formed summaries. One of the newest methods is the Latent Semantic Analysis (LSA). In this paper, different LSA-based summarization algorithms are explained, two of which are proposed by the authors of this paper. The algorithms are evaluated on Turkish and English documents, and their performances are compared using their ROUGE scores. One of our algorithms produces the best scores and both algorithms perform equally well on Turkish and English document sets.
机译:文本摘要解决了以紧凑形式呈现用户所需信息的问题。有多种方法可以创建格式正确的摘要。最新方法之一是潜在语义分析(LSA)。本文解释了基于LSA的不同摘要算法,本文作者提出了两种。该算法在土耳其语和英语文档中进行了评估,并使用其ROUGE得分比较了它们的性能。我们的一种算法产生了最高分,并且两种算法在土耳其文和英文文档集上的表现均相同。

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