Evolving Context-Aware Recommender Systems With Users in Mind
Amit Livne, Eliad Shem Tov, Adir Solomon, Achiya Elyasaf, Bracha, Shapira, and Lior Rokach

TL;DR
This paper introduces a genetic algorithm-based feature selection method for context-aware recommender systems that enhances accuracy, explainability, and user privacy by explicitly selecting low-dimensional contextual information.
Contribution
It presents a novel GA-based feature selection algorithm that outperforms state-of-the-art methods and improves transparency and user control in CARS.
Findings
Outperforms SOTA CARS algorithms in accuracy
Enhances explainability and user trust
Reduces privacy and battery issues
Abstract
A context-aware recommender system (CARS) applies sensing and analysis of user context to provide personalized services. The contextual information can be driven from sensors in order to improve the accuracy of the recommendations. Yet, generating accurate recommendations is not enough to constitute a useful system from the users' perspective, since certain contextual information may cause different issues, such as draining the user's battery, privacy issues, and more. Adding high-dimensional contextual information may increase both the dimensionality and sparsity of the model. Previous studies suggest reducing the amount of contextual information by selecting the most suitable contextual information using a domain knowledge. Another solution is compressing it into a denser latent space, thus disrupting the ability to explain the recommendation item to the user, and damaging users'…
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