An analysis of text mining factors enhancing the identification of relevant studies

The development of science and the spread of knowledge coincide with growing number of publications, and the volume of online content continue to grow at a rapid rate. For some submitted queries, the search engines may return thousands of documents of questionable relevancy. In this paper, we analyz...

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Main Authors: Khashfeh, M., Mahmoud, M.A., Ahmad, M.S.
Format: Article
Language:English
Published: 2018
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spelling my.uniten.dspace-106402019-01-09T08:18:26Z An analysis of text mining factors enhancing the identification of relevant studies Khashfeh, M. Mahmoud, M.A. Ahmad, M.S. The development of science and the spread of knowledge coincide with growing number of publications, and the volume of online content continue to grow at a rapid rate. For some submitted queries, the search engines may return thousands of documents of questionable relevancy. In this paper, we analyze the literature and identify the text mining factors that influence the identification of relevant studies. Five factors are identified which are Text Typography; Paragraph length; Term Frequency factor; Coordination; and Strict search. Subsequently, we propose an agent based-text mining model that facilitate the identification of relevant studies in big databases. The model consists of four components which are, interface, search process, parsing process, and storage. The interface provides a communication mean between a user and his/her counterpart agent (Personal Agent). In addition, it provides an input tool for user’s search preferences. The second component is the search process that is operated by a pattern matching. The third process is the parsing that is operated by a text mining algorithm. The last part is the storage that is managed by Monitor Agent. The proposed framework would be useful in providing an alternative means of searching highly relevant studies from large databases. © 2005 - ongoing JATIT & LLS. 2018-11-07T08:19:13Z 2018-11-07T08:19:13Z 2018 Article en Journal of Theoretical and Applied Information Technology Volume 96, Issue 12, 30 June 2018, Pages 3896-3907
institution Universiti Tenaga Nasional
building UNITEN Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Tenaga Nasional
content_source UNITEN Institutional Repository
url_provider http://dspace.uniten.edu.my/
language English
description The development of science and the spread of knowledge coincide with growing number of publications, and the volume of online content continue to grow at a rapid rate. For some submitted queries, the search engines may return thousands of documents of questionable relevancy. In this paper, we analyze the literature and identify the text mining factors that influence the identification of relevant studies. Five factors are identified which are Text Typography; Paragraph length; Term Frequency factor; Coordination; and Strict search. Subsequently, we propose an agent based-text mining model that facilitate the identification of relevant studies in big databases. The model consists of four components which are, interface, search process, parsing process, and storage. The interface provides a communication mean between a user and his/her counterpart agent (Personal Agent). In addition, it provides an input tool for user’s search preferences. The second component is the search process that is operated by a pattern matching. The third process is the parsing that is operated by a text mining algorithm. The last part is the storage that is managed by Monitor Agent. The proposed framework would be useful in providing an alternative means of searching highly relevant studies from large databases. © 2005 - ongoing JATIT & LLS.
format Article
author Khashfeh, M.
Mahmoud, M.A.
Ahmad, M.S.
spellingShingle Khashfeh, M.
Mahmoud, M.A.
Ahmad, M.S.
An analysis of text mining factors enhancing the identification of relevant studies
author_facet Khashfeh, M.
Mahmoud, M.A.
Ahmad, M.S.
author_sort Khashfeh, M.
title An analysis of text mining factors enhancing the identification of relevant studies
title_short An analysis of text mining factors enhancing the identification of relevant studies
title_full An analysis of text mining factors enhancing the identification of relevant studies
title_fullStr An analysis of text mining factors enhancing the identification of relevant studies
title_full_unstemmed An analysis of text mining factors enhancing the identification of relevant studies
title_sort analysis of text mining factors enhancing the identification of relevant studies
publishDate 2018
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score 13.160551