Please use this identifier to cite or link to this item: http://hdl.handle.net/2080/2307
Title: A knowledge reuse framework for improving novelty and diversity in recommendations
Authors: Pathak, A
Patra, B K
Keywords: Collaborative Filtering
Novelty
Diversity
Knowledge Reuse Framework
Issue Date: Mar-2015
Citation: 2nd ACM IKDD Conference on Data Sciences (CoDS 2015), Bangalore, India. 18-21 March,2015.
Abstract: Recommender system (RS) is an important instrument in e-commerce, which provides personalized recommendations to individual user. Classical algorithms in recommender system mainly emphasize on recommendation accuracy in order to match individual user’s past profile. However, recent study shows that novelty and diversity in recommendations are equally important factors from both user and business view points. In this paper, we introduce a knowledge reuse framework to increase novelty and diversity in the recom- mended items of individual users while compromising very little recommendation accuracy. The proposed framework uses features information which have already been extracted by an existing collaborative filtering. Experimental results with real datasets show that our approach outperfoms state- of-the-art solutions in providing novel and diverse recom- mended items to individual users and aggregate diversity gain achieved by our approach is on par with recently pro- posed rank based approach.
Description: Copyright belongs to proceeding publisher
URI: http://hdl.handle.net/2080/2307
Appears in Collections:Conference Papers

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