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Revisiting recommender systems: an investigative survey

Computer Science

Revisiting recommender systems: an investigative survey

O. A. S. Ibrahim, E. M. G. Younis, et al.

This review maps the evolution of recommender systems—classifying collaborative, content-based, and hybrid approaches—while highlighting how machine learning and deep learning tackle cold-start, filter bubbles, and personalization. It also stresses fairness, transparency, and trust and points to future directions. Research conducted by Authors present in <Authors> tag.... show more
Abstract
This paper provides a thorough review of recommendation methods from academic literature, offering a taxonomy that classifies recommender systems (RSs) into categories like collaborative filtering, content-based systems, and hybrid systems. It examines effectiveness and challenges such as filter bubbles, the cold start issue, and reliance on traditional collaborative and content-based approaches. The survey traces the development of RSs, emphasizing machine learning and deep learning models in overcoming these challenges to deliver more accurate, personalized, and context-aware recommendations. Ethical considerations—including fairness, transparency, and trust—are highlighted as increasingly significant. The literature review discusses collaborative filtering, personalized recommender systems, and robustness strategies, identifies limitations in existing approaches, and suggests promising directions to enhance accuracy, diversity, and ethical practices.
Publisher
Neural Computing and Applications
Published On
Jan 04, 2025
Authors
Osman Ali Sadek Ibrahim, Eman M. G. Younis, Ebtsam A. Mohamed, Walaa N. Ismail
Tags
Recommender systems
Collaborative filtering
Content-based filtering
Hybrid systems
Deep learning
Personalization
Fairness and ethics
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