inferring user search goalsusing feedback session strategy

Kumkar S.K.,Tambe S.S,Toradmal R.

Published in International Journal of Advanced Research in Computer Science Engineering and Information Technology

ISSN: 2321-3337          Impact Factor:1.521         Volume:4         Issue:3         Year: 25 March,2015         Pages:384-390

International Journal of Advanced Research in Computer Science Engineering and Information Technology

Abstract

For vague question,distinctive clients may have diverse pursuit objectives when they submit to web index.The interface & investigation of client inquiry objectives can be extremely helpful in enhancing client web search tools pertinence and client encounters.In this paper we,proposed a novel methodology to derive objectives by dissecting web crawler inquiry logs. First and foremost, we propose a structure to find distinctive client hunt objectives down question by bunching the proposed criticism sessions. Input sessions are built from client navigate logs and can effectively reflect the data needs of clients. Second we propose a novel methodology to create pseudo archive to better speak to the criticism sessions for bunching.Trial results are exhibited utilizing client navigate logs from a business web search tool to approve the viability of our proposed techniques.

Kewords

Click through Log, Feedback Session, Pseudo Document, User Search Goal

Reference

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