Volume : 2, Issue : 11, November - 2013
Search Results Improvement Through Ranking Approach
T. Naheena, K. F. Bharathi
Abstract :
Recommender systems provide plenty of benefits to both users and the businesses. Due to Web related applications, user–generated information is more freestyle and less ordered, which increases the difficulties in mining helpful information from these data sources. Innumerable dissimilar types of recommendations are ready on the Web daily, with movies, music, images, books recommendations, query suggestions, and tags recommendations, etc. It is not concerned about types of data sources old for the recommendations, basically these data sources can be constructed in the type of dissimilar types of graphs. Then it illustrates to generalize different recommendation problems into graph diffusion framework. The existing system does not focus on improving search results. In order to suit the information needs of Web users and recover the user practice in many web applications, Recommender Systems. The proposed framework can be using in many recommendation errands on the World Wide Web (WWW). The search results are improved by heat diffusion based ranking. By using this process we can satisfy the user needs in web application.
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Download PDF Journal DOI : 10.15373/2249555XCite This Article:
T. Naheena, K. F. Bharathi / Search Results Improvement Through Ranking Approach / Global Journal For Research Analysis, Vol:2, Issue:11 November 2013