A FUZZY ASSOCIATIVE CLASSIFICATION APPROACH FOR RECOMMENDER SYSTEMS

Author:

LUCAS JOEL PINHO1,LAURENT ANNE2,MORENO MARÍA N.1,TEISSEIRE MAGUELONNE3

Affiliation:

1. Departamento de Informática y Automática, Universidad de Salamanca, Plaza de la Merced s/n, Salamanca, 37008, Spain

2. LIRMM, Université Montpellier 2-CNRS UMR 5506, 161 rue Ada, Montpellier, 34095, France

3. Cemagref, UMR TETIS-Maison de la Télédétection, 500 rue J.F. Breton, Montpellier, 34093 Cedex 5, France

Abstract

Despite the existence of different methods, including data mining techniques, available to be used in recommender systems, such systems still contain numerous limitations. They are in a constant need for personalization in order to make effective suggestions and to provide valuable information of items available. A way to reach such personalization is by means of an alternative data mining technique called classification based on association, which uses association rules in a prediction perspective. In this work we propose a hybrid methodology for recommender systems, which uses collaborative filtering and content-based approaches in a joint method taking advantage from the strengths of both approaches. Moreover, we also employ fuzzy logic to enhance recommendations' quality and effectiveness. In order to analyze the behavior of the techniques used in our methodology, we accomplished a case study using real data gathered from two recommender systems. Results revealed that such techniques can be applied effectively in recommender systems, minimizing the effects typical drawbacks they present.

Publisher

World Scientific Pub Co Pte Lt

Subject

Artificial Intelligence,Information Systems,Control and Systems Engineering,Software

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1. Reliable Distributed Fuzzy Discretizer for Associative Classification of Big Data;International Journal of Information Retrieval Research;2022-01

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3. ARC-SL: Association rule-based classification with soft labels;Knowledge-Based Systems;2021-08

4. Clustering Techniques to Improve Scalability and Accuracy of Recommender Systems;International Journal of Uncertainty, Fuzziness and Knowledge-Based Systems;2021-08

5. A Scientometric Analysis of Transient Patterns in Recommender System with Soft Computing Techniques;Computación y Sistemas;2021-02-15

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