Utilizing Association Rules for Improving the Performance of Collaborative Filtering

Author:

Khanzadeh Zainab1,Mahdavi Mehregan2

Affiliation:

1. Islamic Azad University - Arak Branch, Iran

2. University of Guilan, Iran

Abstract

Internet technology has rapidly grown during the last decades. Presently, users are faced with a great amount of information and they need help to find appropriate items in the shortest possible time. Recommender systems were introduced to overcome this problem of overloaded information. They recommend items of interest to users based on their expressed preferences. Major e-commerce companies try to use this technology to increase their sales. Collaborative Filtering is the most promising technique in recommender systems. It provides personalized recommendations according to user preferences. But one of the problems of Collaborative Filtering is cold-start. The authors provide a novel approach for solving this problem through using the attributes of items in order to recommend items to more people for improving e-business activities. The experimental results show that the proposed method performs better than existing methods in terms of the number of generated recommendations and their quality.

Publisher

IGI Global

Subject

Law,Management of Technology and Innovation,Business and International Management,Management Information Systems

Reference27 articles.

1. Akbari, F. (2008). Designing an improved hybrid recommender system for predicting customer buying behavior in mcommerce applications (Unpublished master’s thesis). University of Shiraz, Shiraz, Iran.

2. Bilgic, M., Mooney, R. J., & Rich, E. (2005). Explanation for recommender systems: satisfaction vs. promotion. In Proceedings of the International Conference on Intelligent User Interfaces, San Diego, CA (pp. 73-76).

3. Exploiting synergies between semantic reasoning and personalization strategies in intelligent recommender systems: A case study

4. Knowledge-based recommender systems;R.Burke;Encyclopedia of library and information systems,2009

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