User Priority Based Search for Organizing and Grouping

  IJPTT-book-cover
 
International Journal of P2P Network Trends and Technology (IJPTT)          
 
© 2014 by IJPTT Journal
Volume - 4 Issue - 5
Year of Publication : 2014
Authors : Vallamalla Pranitha , Mrs. M. Jhansi Lakshmi

MLA

Vallamalla Pranitha , Mrs. M. Jhansi Lakshmi."User Priority Based Search for Organizing and Grouping ". International Journal of P2P Network Trends and Technology (IJPTT), V4(5):22-28 Sep - Oct 2014, ISSN:2249-2615, www.ijpttjournal.org, Published by Seventh Sense Research Group.

Abstract

Most users want their search engine to incorporate three key features in query results. This paper addresses on the design of search history displays to support information seeking (IS). we try to give improved results on the search mechanism, where Information needs to be tracked in the perspective making the user flexibility to make the complex search to the extent of making the format of user-friendly, To better support users in their long-term information quests on the Web, search engines keep track of their queries and clicks while searching online. In this paper, we study the problem of organizing a user’s historical queries i n t o g r o u p s i n a dynamic and automated fashion. Automatically identifying query groups is helpful for a number of different search engine components and applications, such as query suggestions, result ranking, query alterations, sessionization, and collaborative search.

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Keywords
query clustering, user history, search history, Search engine, user profiling, task identification.