Title of article :
Evolutionary Algorithm for Extractive Text Summarization
Author/Authors :
Rasim ALGULIEV، نويسنده , , Ramiz ALIGULIYEV، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2009
Pages :
11
From page :
128
To page :
138
Abstract :
Text summarization is the process of automatically creating a compressed version of a given document preserving its information content. There are two types of summarization: extractive and abstrac-tive. Extractive summarization methods simplify the problem of summarization into the problem of selecting a representative subset of the sentences in the original documents. Abstractive summarization may compose novel sentences, unseen in the original sources. In our study we focus on sentence based extractive document summarization. The extractive summarization systems are typically based on techniques for sentence extrac-tion and aim to cover the set of sentences that are most important for the overall understanding of a given document. In this paper, we propose unsupervised document summarization method that creates the summary by clustering and extracting sentences from the original document. For this purpose new criterion functions for sentence clustering have been proposed. Similarity measures play an increasingly important role in document clustering. Here we’ve also developed a discrete differential evolution algorithm to optimize the criterion functions. The experimental results show that our suggested approach can improve the performance compared to sate-of-the-art summarization approaches.
Keywords :
sentence clustering , document summarization , discrete differential evolution algorithm
Journal title :
Intelligent Information Management
Serial Year :
2009
Journal title :
Intelligent Information Management
Record number :
664358
Link To Document :
بازگشت