Comprehensive Evaluation of Matrix Factorization Models for Collaborative Filtering Recommender Systems

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Abstract
Matrix factorization models are the core of current commercial collaborative filtering Recommender Systems. This paper tested six representative matrix factorization models, using four collaborative filtering datasets. Experiments have tested a variety of accuracy and beyond accuracy quality measures, including prediction, recommendation of ordered and unordered lists, novelty, and diversity. Results show each convenient matrix factorization model attending to their simplicity, the required prediction quality, the necessary recommendation quality, the desired recommendation novelty and diversity, the need to explain recommendations, the adequacy of assigning semantic interpretations to hidden factors, the advisability of recommending to groups of users, and the need to obtain reliability values. To ensure the reproducibility of the experiments, an open framework has been used, and the implementation code is provided.
Year of Publication
2024
Journal
International Journal of Interactive Multimedia and Artificial Intelligence
Volume
8
Start Page
15
Issue
Regular Issue
Number
6
Number of Pages
15-23
Date Published
06/2024
ISSN Number
1989-1660
URL
DOI
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Acknowledgment
This work has been co-funded by the Ministerio de Ciencia e Innovación of Spain and European Regional Development Fund (FEDER) under grants PID2019-106493RB-I00 (DL-CEMG) and the Comunidad de Madrid under Convenio Plurianual with the Universidad Politécnica de Madrid in the actuation line of Programa de Excelencia para el Profesorado Universitario.