Combining Collaborative, Diversity and Content Based Filtering for Recommendation System

  • Shrestha, Jenu (Intelligent E-Commerce Systems Lab., School of Computer Science & Engineering, Inha University) ;
  • Uddin, Mohammed Nazim (Intelligent E-Commerce Systems Lab., School of Computer Science & Engineering, Inha University) ;
  • Jo, Geun-Sik (Intelligent E-Commerce Systems Lab., School of Computer Science & Engineering, Inha University)
  • Published : 2007.11.23

Abstract

Combining collaborative filtering with some other technique is most common in hybrid recommender systems. As many recommended items from collaborative filtering seem to be similar with respect to content, the collaborative-content hybrid system suffers in terms of quality recommendation and recommending new items as well. To alleviate such problem, we have developed a novel method that uses a diversity metric to select the dissimilar items among the recommended items from collaborative filtering, which together with the input when fed into content space let us improve and include new items in the recommendation. We present experimental results on movielens dataset that shows how our approach performs better than simple content-based system and naive hybrid system

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