Feature-based sentence extraction using fuzzy inference rules
Automatic text summarization is a wide research area. Automatic text summarization is to compress the original text into a shorter version and help the user to quickly understand large volumes of information. There are several ways in which one can characterize different approaches to text summariza...
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my.utm.144302011-08-26T05:00:20Z http://eprints.utm.my/id/eprint/14430/ Feature-based sentence extraction using fuzzy inference rules Suanmali, Ladda Salim, Naomie Binwahlan, Mohammed Salem QA75 Electronic computers. Computer science Automatic text summarization is a wide research area. Automatic text summarization is to compress the original text into a shorter version and help the user to quickly understand large volumes of information. There are several ways in which one can characterize different approaches to text summarization: extractive and abstractive from single document or multi document. This paper focuses on the automatic text summarization by sentence extraction. The first step in summarization by extraction is the identification of important features. Our approach used important features based on fuzzy logic to extract the sentences. In our experiment, we used 30 test documents in DUC2002 data set. Each document is prepared by preprocessing process: sentence segmentation, tokenization, removing stop word, and word stemming. Then, we use 8 important features and calculate their score for each sentence. We propose a method using fuzzy logic for sentence extraction and compare our results with the baseline summarizer and Microsoft Word 2007 summarizers. The results show that the highest average precision, recall, and F-measure for the summaries are conducted from fuzzy method. IEEE 2009 Book Section PeerReviewed Suanmali, Ladda and Salim, Naomie and Binwahlan, Mohammed Salem (2009) Feature-based sentence extraction using fuzzy inference rules. In: 2009 International Conference on Signal Processing Systems. Article number 5166839 . IEEE, pp. 511-515. ISBN 978-076953654-5 http://dx.doi.org/10.1109/ICSPS.2009.156 doi:10.1109/ICSPS.2009.156 |
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QA75 Electronic computers. Computer science Suanmali, Ladda Salim, Naomie Binwahlan, Mohammed Salem Feature-based sentence extraction using fuzzy inference rules |
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Automatic text summarization is a wide research area. Automatic text summarization is to compress the original text into a shorter version and help the user to quickly understand large volumes of information. There are several ways in which one can characterize different approaches to text summarization: extractive and abstractive from single document or multi document. This paper focuses on the automatic text summarization by sentence extraction. The first step in summarization by extraction is the identification of important features. Our approach used important features based on fuzzy logic to extract the sentences. In our experiment, we used 30 test documents in DUC2002 data set. Each document is prepared by preprocessing process: sentence segmentation, tokenization, removing stop word, and word stemming. Then, we use 8 important features and calculate their score for each sentence. We propose a method using fuzzy logic for sentence extraction and compare our results with the baseline summarizer and Microsoft Word 2007 summarizers. The results show that the highest average precision, recall, and F-measure for the summaries are conducted from fuzzy method.
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format |
Book Section |
author |
Suanmali, Ladda Salim, Naomie Binwahlan, Mohammed Salem |
author_facet |
Suanmali, Ladda Salim, Naomie Binwahlan, Mohammed Salem |
author_sort |
Suanmali, Ladda |
title |
Feature-based sentence extraction using fuzzy inference rules
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title_short |
Feature-based sentence extraction using fuzzy inference rules
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title_full |
Feature-based sentence extraction using fuzzy inference rules
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title_fullStr |
Feature-based sentence extraction using fuzzy inference rules
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Feature-based sentence extraction using fuzzy inference rules
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title_sort |
feature-based sentence extraction using fuzzy inference rules |
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IEEE |
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2009 |
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http://eprints.utm.my/id/eprint/14430/ http://dx.doi.org/10.1109/ICSPS.2009.156 |
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