Applying probabilistic model for ranking Webs in multi-context

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Applying probabilistic model for ranking Webs in multi-context

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dc.contributor.author Le, Trung Kien
dc.contributor.author Tran, Loc Hung
dc.contributor.author Le, Anh Vu
dc.date.accessioned 2011-04-20T04:10:28Z
dc.date.available 2011-04-20T04:10:28Z
dc.date.issued 2007
dc.identifier.citation VNU Journal of Science, Mathematics - Physics 23 (2007) 35-46 vi
dc.identifier.issn 0866-8612
dc.identifier.uri http://hdl.handle.net/123456789/888
dc.description VNU Journal of Science, Mathematics - Physics. Vol. 23 (2007), No 1 (M.P), P. 35-46 vi
dc.description.abstract The PageRank algorithm, used in the Google search engine, greatly improves the results of Web search by applying probabilistic model on the link structure of Webs to evaluate the “importance” of Webs. In PageRank probabilistic model, the links and webs are uniform, so the rank score of webs are quite independent from their content. In practice, the researchers often hope that the web results can be ranked by their proposed topics. Moreover, when computer’s techniques solve given problems ineffectively, it’s necessary to do better research in theoretical problems. From this judgement, in this paper, we introduce and describe the MPageRank based on a new probabilistic model supporting multi-context for ranking Webs. A Web now has different ranking scores, which depends on the given multi topics. The basic idea in establishing the new MPageRank model is that partition our Web graph into smaller-size sub Web graph. As a consequence of evaluation and rejection about pages influence weakly to other pages, the rank score of pages of the original Web graph can be approximated from the rank score of pages in the new partition Web graph. Similar to the PageRank, the multi ranking scores in the MPageRank are pre-computed and reflect the hyperlink of Web environment. vi
dc.language.iso en vi
dc.publisher ĐHQGHN vi
dc.subject probabilistic model vi
dc.subject Web vi
dc.subject multi-context vi
dc.title Applying probabilistic model for ranking Webs in multi-context vi
dc.type Article vi

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