Multi-document news summarization via paragraph embedding and density peak clustering

Baoyan Wang, Jian Zhang, Fanggui Ding, Yuexian Zou
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引用次数: 5

Abstract

Multi-document news summarization (MDNS) aims to create a condensed summary while retaining the main characteristics of the original set of news documents. Research shows that the text representation is one of the keys for MDNS techniques. Without doubt, the bag-of-words (BOW) methods are most widely used. However, BOW methods generate high-dimensional representation vectors which ask for large storage and high computational complexity for MDNS. Besides, the generated representation vectors by BOW lack the semantic information and temporal information of the words, which limits the performance of MDNS. To tackle above issues, this paper introduces a word/paragraph embedding method via neural network modelling to generate lower dimensional word/paragraph representation vectors retaining word order and context information and semantic relationships between words/paragraphs. Besides, for MDNS, relevance and redundancy are both critical issues. Unlike the traditional MDNS methods quantifying the relevance among different sentences followed with a greedy post-processing module to ensure the diversity of summary, in this study, we concurrently take relevance, diversity and length constraint into account by employing density peak clustering (DPC) technique and the integrated sentence scoring method to select the more representative sentences and generate the summary with less redundancy. Experimental results on the DUC2003 and DUC2004 datasets demonstrate the effectiveness of our MDNS method, compared to the state-of-the-art methods.
基于段落嵌入和密度峰聚类的多文档新闻摘要
多文档新闻摘要(MDNS)旨在创建一个浓缩的摘要,同时保留原始新闻文档集的主要特征。研究表明,文本表示是MDNS技术的关键之一。毫无疑问,词袋法(BOW)的应用最为广泛。然而,BOW方法产生的高维表示向量对MDNS的存储空间和计算复杂度要求很高。此外,BOW生成的表示向量缺乏词的语义信息和时态信息,这限制了MDNS的性能。为了解决上述问题,本文引入了一种基于神经网络建模的词/段嵌入方法,生成低维的词/段表示向量,保留词/段之间的语序和上下文信息以及语义关系。此外,对于mdn来说,相关性和冗余都是关键问题。与传统的MDNS方法通过量化句子之间的相关性,然后使用贪婪的后处理模块来保证摘要的多样性不同,在本研究中,我们采用密度峰聚类(DPC)技术和综合句子评分方法,同时考虑相关性、多样性和长度约束,选择更有代表性的句子,生成冗余度更低的摘要。在DUC2003和DUC2004数据集上的实验结果表明,与现有的方法相比,我们的MDNS方法是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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