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Knowledge Discovery Framework for Community Web Directories


Affiliations
1 Department of Computer Science and Engineering, SBCE, Khammam, India
2 MIST College, Sathupally, Khammam, India
3 AMR Institute of Technology, Adilabadh, India
     

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In contrast to most of the work on Web usage mining, the usage data that are analyzed here correspond to user navigation throughout the Web, rather than a particular Web site, exhibiting as a result a high degree of thematic diversity. For modeling the user communities, we introduce a novel methodology that combines the user's browsing behavior with thematic information from the Web directories. The proposed personalization methodology is evaluated in a general-purpose Web directory, indicating its potential value to the web user. A Web directory, such as Yahoo (www.yahoo.com) and the Open Directory project (ODP) (dmoz.org), allows users to find Web sites related to the topic they are interested in, starting with broad categories and gradually narrowing down, choosing the category most related to their interests. For personalization Web directories uses the OCDM, OPDM &OCPDM algorithms. The experiment results show the effectiveness of the different machine learning techniques on the task.


Keywords

OCDM, OPDM, OCPDM, Personalization.
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  • Knowledge Discovery Framework for Community Web Directories

Abstract Views: 253  |  PDF Views: 2

Authors

Upendar Para
Department of Computer Science and Engineering, SBCE, Khammam, India
Podila Kondala Rao
MIST College, Sathupally, Khammam, India
Manasa
AMR Institute of Technology, Adilabadh, India

Abstract


In contrast to most of the work on Web usage mining, the usage data that are analyzed here correspond to user navigation throughout the Web, rather than a particular Web site, exhibiting as a result a high degree of thematic diversity. For modeling the user communities, we introduce a novel methodology that combines the user's browsing behavior with thematic information from the Web directories. The proposed personalization methodology is evaluated in a general-purpose Web directory, indicating its potential value to the web user. A Web directory, such as Yahoo (www.yahoo.com) and the Open Directory project (ODP) (dmoz.org), allows users to find Web sites related to the topic they are interested in, starting with broad categories and gradually narrowing down, choosing the category most related to their interests. For personalization Web directories uses the OCDM, OPDM &OCPDM algorithms. The experiment results show the effectiveness of the different machine learning techniques on the task.


Keywords


OCDM, OPDM, OCPDM, Personalization.