个性化饮食助手——智能空间应用

B. Tusor, Gabriella Simon-Nagy, J. Tóth, A. Várkonyi-Kóczy
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引用次数: 8

摘要

如今,有许多类型的饮食,旨在提高生活质量,健康和长寿的人。然而,这些饮食通常涉及严格计划的制度,由于变化的突然性,很难习惯甚至很难坚持到底。在本文中,提出了智能空间应用程序的框架,通过引入小的,渐进的改变他们的消费习惯,帮助其用户长期实现更健康的饮食。该应用程序观察用户每天的营养摄入量,应用数据挖掘来了解他们的个人口味,并教育他们当前的饮食对健康的影响。然后,它分析知识库,找到与感知偏好相一致的不同食物或饮料,同时还考虑到用户的身体特性、活动和健康状况(例如糖尿病、乳糜泻、食物过敏等),为用户的日常营养提供平衡。最后,系统根据调查结果对从消费清单中添加商品或将一种商品更改为另一种商品提出建议。
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Personalized dietary assistant — An intelligent space application
Nowadays, there are numerous types of diets that aim to improve the quality of life, health and longevity of people. However, these diets typically involve a strictly planned regime, which can be hard to get used to or even to follow through at all, due to the sudden nature of the change. In this paper, the framework for an Intelligent Space application is proposed that helps its users to achieve a healthier diet in the long term by introducing small, gradual changes into their consumption habits. The application observes the daily nutrition intake of its users, applies data mining in order to learn their personal tastes, and educates them about the effects of their current diet on their health. Then it analyzes the knowledge base to find different food or drink items that align with the perceived preferences, while also add to the balance of the daily nutrition of the users considering their physical properties, activities, and health conditions (e.g. diabetes, celiac disease, food allergies, etc). Finally, the system uses the findings to make suggestions about adding items from the consumption list, or change one item to another.
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