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Contextual Model of Recommending Resources on an Academic Networking Portal

Authors

Anoop Kumar Pandey, Amit Kumar and Balaji Rajendran, Centre for Development of Advanced Computing, India

Abstract

Artificial Intelligence techniques have been instrumental in helping users to handle the large amount of information on the Internet. The idea of recommendation systems, custom search engines, and intelligent software has been widely accepted among users who seek assistance in searching, sorting, classifying, filtering and sharing this vast quantity of information. In this paper, we present a contextual model of recommendation engine which keeping in mind the context and activities of a user, recommends resources in an academic networking portal. The proposed method uses the implicit method of feedback and the concepts relationship hierarchy to determine the similarity between a user and the resources in the portal. The proposed algorithm has been tested on an academic networking portal and the results are convincing.

Keywords

Contextual Model, Recommendation Engine, Academic Networking

Full Text  Volume 3, Number 6