实时个性化营养推荐引擎。

Nitish Nag, Vaibhav Pandey, Ramesh Jain
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引用次数: 0

摘要

饮食选择是糖尿病、心脏病和肥胖症等常见疾病的主要决定因素。营养师等人类医疗服务提供者不可能随时随地陪伴在每个用户身边,人工指导他们做出最佳选择。融合了专家知识的自动自适应指导可以利用多媒体数据,在没有人工干预的情况下,通过技术扩展健康指导。要想轻松做出决策,就必须处理好推荐(在本例中为膳食菜肴)的正确粒度问题。因此,我们制作了一个决策支持系统,利用多模态数据,依靠及时的、可感知上下文的个性化数据来寻找满足用户需求的本地餐馆菜肴。该系统中的算法可以获取产品的营养成分,有效计算出哪些产品最健康,然后根据用户的个性化健康数据流和环境背景重新排序并筛选出结果。我们的推荐引擎的主要目标是,通过将菜肴建议提炼为一个易于理解的单一评分,降低外出就餐时做出个性化健康选择的障碍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Live Personalized Nutrition Recommendation Engine.

Live Personalized Nutrition Recommendation Engine.

Live Personalized Nutrition Recommendation Engine.

Live Personalized Nutrition Recommendation Engine.

Dietary choices are the primary determinants of prominent dis- eases such as diabetes, heart disease, and obesity. Human health care providers, such as dietitians, cannot be at the side of every user at all times to manually guide them towards optimal choices. Automated adaptive guidance fused with expert knowledge can use multimedia data to technologically scale health guidance without human intervention. Addressing the correct granularity of recommendations (in this case meal dishes) is essential for effortless decision making. Thus we make a decision support system using multi-modal data relying on timely, contextually aware, personalized data to find local restaurant dishes to satisfy a user's needs. Algorithms in this system take nutritional facts regarding products, efficiently calculate which items are healthiest, then re-rank and filter results to users based on their personalized health data streams and environmental context. Our recommendation engine is driven by the primary goal of lowering the barriers to a personalized healthy choice when eating out, by distilling dish suggestions to a single contextually aware and easily understood score.

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