Personalized PageRank Based Multi-document Summarization

Yong Liu, Xiaolei Wang, Jin Zhang, Hongbo Xu
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引用次数: 27

Abstract

This paper presents a novel multi-document summarization approach based on personalized pagerank (PPRSum). In this algorithm, we uniformly integrate various kinds of information in the corpus. At first, we train a salience model of sentence global features based on Naive Bayes Model. Secondly, we generate a relevance model for each corpus utilizing the query of it. Then, we compute the personalized prior probability for each sentence in the corpus utilizing the salience model and the relevance model both. With the help of personalized prior probability, a Personalized PageRank ranking process is performed depending on the relationships among all sentences in the corpus. Additionally, the redundancy penalty is imposed on each sentence. The summary is produced by choosing the sentences with both high query-focused information richness and high information novelty. Experiments on DUC2007 are performed and the ROUGE evaluation results show that PPRSum ranks between the 1st and the 2nd systems on DUC2007 main task.
基于多文档摘要的个性化PageRank
提出了一种基于个性化网页排名(PPRSum)的多文档摘要方法。在该算法中,我们对语料库中的各种信息进行统一的整合。首先,我们在朴素贝叶斯模型的基础上训练句子全局特征的显著性模型。其次,利用对语料库的查询生成语料库的关联模型;然后,我们利用显著性模型和相关性模型计算语料库中每个句子的个性化先验概率。在个性化先验概率的帮助下,根据语料库中所有句子之间的关系进行个性化PageRank排序过程。此外,每句话都有冗余处罚。摘要通过选择具有高查询信息丰富性和高信息新颖性的句子来生成。在DUC2007上进行了实验,ROUGE评价结果表明,PPRSum在DUC2007的主要任务上排名在第一和第二之间。
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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