Abstract

Automatic Text summarization aims to automati-cally generate condensed summary from a large set of documents on the same topic. We formulate text summarization task as a multi-objective optimization problem by defining information coverage and diversity as two conflicting objective functions. With this formulation, we propose a novel technique to improve the performance using a knowledge base. The main rationale of the approach is to extract important text features of the original text by detecting important entities in a knowledge base. Next, an improvement on the multi-objective optimization algorithm is also proposed for the automatic text summarization problem. The focus is on improving efficiency of the each steps in the evolutionary multi-objective optimization process which is applicable to all tasks with the same problem formulation. The result summary of the suggested method ensure the maximum coverage of the original documents and the diversity of the sentences in the summary among each other. The experiments on DUC2002 and DUC2004 multi-document summarization task dataset shows that the proposed model is effective compared to other methods.

Highlights

  • As text information publication speed outgrows our consumption capability, there have been many approaches to deal with the information overload problem suggested by the research community, such as information retrieval [1], semantic web [2], and text summarization [3]

  • The goal of this paper is to propose a generic, extractive, and multi-document summarization method

  • Extractive summarization task composes a summary with unaltered sentences selected from the original document set, which is distinguished from an abstractive summarization task where sentence modification or phrase selection and generation are allowed

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Summary

Introduction

As text information publication speed outgrows our consumption capability, there have been many approaches to deal with the information overload problem suggested by the research community, such as information retrieval [1], semantic web [2], and text summarization [3]. The goal of this paper is to propose a generic, extractive, and multi-document summarization method. Each of these summarization types has an alternative approach, namely, query-focused, abstractive, and single-document summarization. As opposed to a generic summarization, some keywords are provided for a query-focused summarization task. The summarizers proceed with the summarization using the query term as a guide. Extractive summarization task composes a summary with unaltered sentences selected from the original document set, which is distinguished from an abstractive summarization task where sentence modification or phrase selection and generation are allowed

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