DESAMC+DocSum: Differential evolution with self-adaptive mutation and crossover parameters for multi-document summarization

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Multi-document summarization is used to extract the main ideas of the documents and put them into a short summary. In multi-document summarization, it is important to reduce redundant information in the summaries and extract sentences, which are common to given documents. This paper presents a document summarization model which extracts salient sentences from given documents while reducing redundant information in the summaries and maximizing the summary relevancy. The model is represented as a modified p-median problem. The proposed approach not only expresses sentence-to-sentence relationship, but also expresses summary-to-document and summary-to-subtopics relationships. To solve the optimization problem a new differential evolution algorithm based on self-adaptive mutation and crossover parameters, called DESAMC, is proposed. Experimental studies on DUC benchmark data show the good performance of proposed model and its potential in summarization tasks.

论文关键词:Multi-document summarization,Optimization problem,p-Median problem,Differential evolution,Self-adaptive mutation and crossover strategies

论文评审过程:Received 12 May 2011, Revised 25 May 2012, Accepted 25 May 2012, Available online 4 June 2012.

论文官网地址:https://doi.org/10.1016/j.knosys.2012.05.017