F-EvoRecSys:基于模糊推理的个性化幸福建议进化方法

I. Palomares, Hugo Alcaraz-Herrera, Kao-Yi Shen, S. Syed-Abdul, Shwetambara Malwade
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引用次数: 0

摘要

如今,许多市民都应付着繁忙而充满活力的生活方式。采用或保持健康的生活方式以预防慢性疾病或精神障碍是一项核心的社会挑战。当前的全球大流行比以往任何时候都更加证明,让公民参与他们喜欢的健康和量身定制的活动至关重要,这是从预防的角度维护良好健康的关键驱动因素,符合可持续发展目标3:“良好健康和福祉”。这就是为什么个性化健康和幸福的推荐系统最近成为一种研究趋势,特别是在食物和体育活动推荐方面。本文介绍了F-EvoRecSys:一种进化算法驱动的“健康捆绑”健康推荐方法的扩展,该方法结合了一个模糊推理引擎,旨在根据用户的锻炼习惯改进体育活动推荐。一项实验研究表明,这将如何导致更多样化的推荐。本文还从不同角度讨论了个性化福利推荐系统面临的挑战和未来发展方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
F-EvoRecSys: Fuzzy Inference meets Evolutionary Approach for Personalized Well-being Recommendations
Many citizens nowadays cope with busy and dynamic lifestyles. Adopting or maintaining a healthy lifestyle to prevent chronic diseases or mental disorders is a core societal challenge. The current global pandemic has evidenced more than ever before the critical importance of engaging citizens with healthy and tailored activities that they like, as a key driver for safeguarding good health from a preventive vantage point, aligned with the pursuance of SDG 3: "good health and well-being". This is why Recommender Systems for personalized health and well-being have lately become a research trend, particularly for food and physical activity recommendation. This paper presents F-EvoRecSys: an extension of an evolutionary algorithm-driven approach for "healthy bundle" well-being recommendations that incorporates a fuzzy inference engine aimed at improving physical activity recommendations based on users’ exercising habits. An experimental study demonstrates how this can lead to more diversified recommendations. The paper also discusses challenges and future directions for personalized well-being recommender systems under different perspectives.
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