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An Indicator-based Multi-Objective Optimization Approach Applied to Extractive Multi-Document Text Summarization

机译:基于指标的多目标优化方法应用于提取多文件文本摘要

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摘要

The massive amount of textual information on the Internet makes that automatic text summarization methods are becoming very important nowadays. Particularly, the purpose of extractive multi-document text summarization methods is to generate summaries from a document collection by, simultaneously, covering the main content and reducing the redundant information. In the scientific literature, these summarization methods have been addressed through optimization techniques, being almost all of them single-objective optimization approaches. Nevertheless, multi-objective approaches have gained importance because their results have improved the single-objective ones.On the other hand, in the multi-objective optimization field, indicator-based approaches have obtained good results in other applications. For this reason, an Indicator-based Multi-Objective Artificial Bee Colony (IMOABC) algorithm has been developed and applied to the extractive multi-document text summarization problem. Experiments have been carried out based on Document Understanding Conferences (DUC) datasets, and the obtained results have been evaluated and compared with Recall-Oriented Understudy for Gisting Evaluation (ROUGE) metrics. The results have improved to the ones in the scientific literature between 7.37% and 40.76% and 2.59% and 11.24% for ROUGE-2 and ROUGE-L, respectively.
机译:互联网上的大量文本信息使得自动文本摘要方法如今变得非常重要。特别是,提取多文件文本摘要方法的目的是通过同时,覆盖主要内容并减少冗余信息来生成从文档收集的摘要。在科学文献中,通过优化技术解决了这些摘要方法,几乎​​所有这些都是单目标优化方法。然而,多目标方法获得重要性,因为它们的结果改善了单一目标。另一方面,在多目标优化领域,基于指标的方法在其他应用中获得了良好的结果。因此,已经开发了一种基于指示的多目标人造蜂菌落(IMOABC)算法并应用于提取多文件文本摘要问题。实验已经根据文件了解会议(DUC)数据集进行了实验,并评估了所获得的结果,并将其与召回考虑因素评估(Rouge)指标进行比较。结果与科学文献中的结果有所改善,分别为7.37%和40.76%和2.59%和11.24%,分别为胭脂2和Rouge-L。

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