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Browsing by Author "Albaraa Abuobieda M. ALI"

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    Pseudo genetic and probabilistic-based feature selection method for extractive single document summarization
    (Asian Research Publishing Network (ARPN), 2011) Albaraa Abuobieda M. ALI; Naomie Salim; Rihab Eltayeb Ahmed; Mohammed Salem Binwahlan; Ladda Suanmali; Ahmed Hamza; A. A. M. ALI; Faculty of Computer Science and Information Systems, University Technology Malaysia, 81310, Johor, Malaysia; email: albarraa@hotmail.com
    Text features, as a scoring mechanism, are used to identify the key ideas in a given document to be represented in the text summary. Considering all features within same the level of importance may lead to generate a summary with low quality. In this paper, we present a feature selection method using (pseudo) Genetic probabilistic-based Summarization (PGPSum) model for extractive single document summarization. The proposed method, working as features selection mechanism, is used to extract the weights of features from texts. Then, the weights will be used to tune features' scores in order to optimize the summarization process. In this way, important sentences will be selected for representing the document summary. The results show that, our PGPSum model outperformed Ms-Word and Copernic summarizers benchmarks by obtaining a similarity ratio closest to human benchmark summary. © 2005 - 2011 JATIT & LLS. All rights reserved.

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