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EvoRecSys: Evolutionary framework for health and well-being recommender systems

Hugo Alcaraz‐Herrera, John Cartlidge, Zoi Toumpakari, Max J. Western, Iván Palomares

2022User Modeling and User-Adapted Interaction32 citationsDOIOpen Access PDF

Abstract

Abstract In recent years, recommender systems have been employed in domains like e-commerce, tourism, and multimedia streaming, where personalising users’ experience based on their interactions is a fundamental aspect to consider. Recent recommender system developments have also focused on well-being, yet existing solutions have been entirely designed considering one single well-being aspect in isolation, such as a healthy diet or an active lifestyle. This research introduces EvoRecSys, a novel recommendation framework that proposes evolutionary algorithms as the main recommendation engine, thereby modelling the problem of generating personalised well-being recommendations as a multi-objective optimisation problem. EvoRecSys captures the interrelation between multiple aspects of well-being by constructing configurable recommendations in the form of bundled items with dynamic properties. The preferences and a predefined well-being goal by the user are jointly considered. By instantiating the framework into an implemented model, we illustrate the use of a genetic algorithm as the recommendation engine. Finally, this implementation has been deployed as a Web application in order to conduct a users’ study.

Topics & Concepts

Recommender systemComputer scienceOrder (exchange)Isolation (microbiology)Data scienceWorld Wide WebBioinformaticsBiologyFinanceEconomicsRecommender Systems and TechniquesAdvanced Multi-Objective Optimization AlgorithmsAdvanced Bandit Algorithms Research
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