Article ID Journal Published Year Pages File Type
383468 Expert Systems with Applications 2013 10 Pages PDF
Abstract

•We perform an assessment in 15 summarization methods.•We use 3 different data sets to evaluate all summarization method.•We point some ways about: how can summarization results be improved?

Text summarization is the process of automatically creating a shorter version of one or more text documents. It is an important way of finding relevant information in large text libraries or in the Internet. Essentially, text summarization techniques are classified as Extractive and Abstractive. Extractive techniques perform text summarization by selecting sentences of documents according to some criteria. Abstractive summaries attempt to improve the coherence among sentences by eliminating redundancies and clarifying the contest of sentences. In terms of extractive summarization, sentence scoring is the technique most used for extractive text summarization. This paper describes and performs a quantitative and qualitative assessment of 15 algorithms for sentence scoring available in the literature. Three different datasets (News, Blogs and Article contexts) were evaluated. In addition, directions to improve the sentence extraction results obtained are suggested.

Related Topics
Physical Sciences and Engineering Computer Science Artificial Intelligence
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