Title of article :
An adaptive meta-search engine considering the user’s field of interest
Author/Authors :
Hassanpour, Hamid shahrood university of technology, شاهرود, ايران , Zahmatkesh, Farzaneh mazandaran university of science and technology, بابل, ايران
Abstract :
Existing meta-search engines return web search results based on the page relevancy to the query, their popularity and content. It is necessary to provide a meta-search engine capable of ranking results considering the user’s field of interest. Social networks can be useful to find the users’ tendencies, favorites, skills, and interests. In this paper we propose MSE, a meta-search engine for document retrieval utilizing social information of the user. In this approach, each user is assumed to have a profile containing his fields of interest. MSE extracts main phrases from the title and short description of receiving results from underlying search engines. Then it clusters the main phrases by a Self-Organizing Map neural network. Generated clusters are then ranked on the basis of the user’s field of interest. We have compared the proposed MSE against two other meta-search engines. The experimental results show the efficiency and effectiveness of the proposed method.
Keywords :
Clustering , Meta , search engine , Ranking , Search relevance , Social information
Journal title :
Journal Of King Saud University - Computer and Information Sciences
Journal title :
Journal Of King Saud University - Computer and Information Sciences