Evolutionary learning multi-agent based information retrieval systems

The volume and variety of information available on the Internet has experienced exponential growth, presenting a difficulty to users wishing to obtain information that accurately matches their interests. A number of factors affect the accuracy of matching user interests and the retrieved documents....

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Main Author: Maleki-Dizaji, Saeedeh
Other Authors: Nyongesa, Henry ; Siddiqi, Jawed
Published: Sheffield Hallam University 2003
Subjects:
Online Access:https://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.404455
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spelling ndltd-bl.uk-oai-ethos.bl.uk-4044552018-09-05T03:31:40ZEvolutionary learning multi-agent based information retrieval systemsMaleki-Dizaji, SaeedehNyongesa, Henry ; Siddiqi, Jawed2003The volume and variety of information available on the Internet has experienced exponential growth, presenting a difficulty to users wishing to obtain information that accurately matches their interests. A number of factors affect the accuracy of matching user interests and the retrieved documents. First, is the fact that users often do not present queries to information retrieval systems in the form that optimally represents the information they want. Secondly, the measure of a document's relevance is highly subjective and variable between different users. This thesis addresses this problem with an adaptive approach that relies on evolutionary user-modelling. The proposed information retrieval system learns user needs from user-provided relevance feedback. The method combines a qualitative feedback measure obtained using fuzzy inference, and quantitative feedback based on evolutionary algorithms (Genetic Algorithms) fitness measures. Furthermore, the retrieval system's design approach is based on a multi-agent design approach, in order to handle the complexities of the information retrieval system including: document indexing, relevance feedback, user modelling, filtering and ranking the retrieve documents. The major contribution of this research are the combination of genetic algorithms and fuzzy relevance feedback for modelling adaptive behaviour, which is compared against conventional relevance feedback. Novel Genetic Algorithms operators are proposed within the context of textual; the encoding and vector space model for document representation is generalised within the same context.025.04Sheffield Hallam Universityhttps://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.404455http://shura.shu.ac.uk/6856/Electronic Thesis or Dissertation
collection NDLTD
sources NDLTD
topic 025.04
spellingShingle 025.04
Maleki-Dizaji, Saeedeh
Evolutionary learning multi-agent based information retrieval systems
description The volume and variety of information available on the Internet has experienced exponential growth, presenting a difficulty to users wishing to obtain information that accurately matches their interests. A number of factors affect the accuracy of matching user interests and the retrieved documents. First, is the fact that users often do not present queries to information retrieval systems in the form that optimally represents the information they want. Secondly, the measure of a document's relevance is highly subjective and variable between different users. This thesis addresses this problem with an adaptive approach that relies on evolutionary user-modelling. The proposed information retrieval system learns user needs from user-provided relevance feedback. The method combines a qualitative feedback measure obtained using fuzzy inference, and quantitative feedback based on evolutionary algorithms (Genetic Algorithms) fitness measures. Furthermore, the retrieval system's design approach is based on a multi-agent design approach, in order to handle the complexities of the information retrieval system including: document indexing, relevance feedback, user modelling, filtering and ranking the retrieve documents. The major contribution of this research are the combination of genetic algorithms and fuzzy relevance feedback for modelling adaptive behaviour, which is compared against conventional relevance feedback. Novel Genetic Algorithms operators are proposed within the context of textual; the encoding and vector space model for document representation is generalised within the same context.
author2 Nyongesa, Henry ; Siddiqi, Jawed
author_facet Nyongesa, Henry ; Siddiqi, Jawed
Maleki-Dizaji, Saeedeh
author Maleki-Dizaji, Saeedeh
author_sort Maleki-Dizaji, Saeedeh
title Evolutionary learning multi-agent based information retrieval systems
title_short Evolutionary learning multi-agent based information retrieval systems
title_full Evolutionary learning multi-agent based information retrieval systems
title_fullStr Evolutionary learning multi-agent based information retrieval systems
title_full_unstemmed Evolutionary learning multi-agent based information retrieval systems
title_sort evolutionary learning multi-agent based information retrieval systems
publisher Sheffield Hallam University
publishDate 2003
url https://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.404455
work_keys_str_mv AT malekidizajisaeedeh evolutionarylearningmultiagentbasedinformationretrievalsystems
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