Publication | Open Access
EvoRecSys: Evolutionary framework for health and well-being recommender systems
28
Citations
25
References
2022
Year
Quality Of LifeEngineeringEvolutionary AlgorithmsInformation RetrievalData ScienceData MiningPreference LearningRecommender SystemsGenetic AlgorithmCollaborative FilteringPublic HealthUser ModelingHealth InformaticsHealth PromotionUser ExperienceComputer ScienceEvolutionary FrameworkPositive ComputingGroup RecommendersRecommendation Systems
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.
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