Cerón-Rios Gineth, López Diego M, Blobel Bernd
Telematics Engineering Research Group, University of Cauca, Colombia.
Medical Faculty, University of Regensburg, Germany.
Stud Health Technol Inform. 2017;237:140-147.
Recommender systems (RS) are useful tools for filtering and sorting items and information for users. There is a wide diversity of approaches that help creating personalized recommendations. Context-aware recommender systems (CARS) are a kind of RS which provide adaptation capabilities to the user's environment, e.g., by sensing data through wearable devices or other biomedical sensors. In healthcare and wellbeing, CARS can support health promotion and health education, considering that each individual requires tailored intervention programs. Our research aims at proposing a context-aware mobile recommender system for the promotion of healthy habits. The system is adapted to the user's needs, his/her health information, interests, time, location and lifestyles. In this paper, the CARS computational architecture and the user and context models of health promotion are presented, which were used to implement and test a prototype recommender system.
推荐系统(RS)是用于为用户过滤和分类项目及信息的有用工具。有多种方法可帮助创建个性化推荐。上下文感知推荐系统(CARS)是一种推荐系统,它通过可穿戴设备或其他生物医学传感器感知数据等方式,为用户的环境提供适配能力。在医疗保健和健康领域,考虑到每个人都需要量身定制的干预计划,CARS可以支持健康促进和健康教育。我们的研究旨在提出一种用于促进健康习惯的上下文感知移动推荐系统。该系统适应用户的需求、其健康信息、兴趣、时间、位置和生活方式。本文介绍了CARS计算架构以及健康促进的用户和上下文模型,这些被用于实现和测试一个推荐系统原型。