糖尿病患者主动多类型情境感知推荐系统的设计与实现

A. Abu-Issa, S. Hajjaj, S. Al-Jamal, D. Barghotti, A. Awad, M. Hussein, Iyad Tumar, Abualsoud Hanani
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引用次数: 1

摘要

本文提出了一个多类型、主动和情境感知的推荐系统的设计和实现,以支持糖尿病患者的健康生活方式。该推荐系统的主要特点包括在生成推荐时考虑用户的上下文,能够同时推荐多种类型的产品。推荐的类型包括食物、饮料、体育锻炼和药物。此外,所提出的推荐系统是主动的,根据上下文将推荐推送给用户,而不需要用户进行明确的查询。为该系统开发了一个原型,以及简单的Android移动应用程序。采用人工神经网络对系统进行训练。结果表明,总体准确率为89.5%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Design and Implementation of Proactive Multi-Type Context-Aware Recommender System for Patients Suffering Diabetes
This paper presents a design and implementation of a multi-type, proactive and context-aware recommender system that supports a healthy lifestyle for patients who suffer Diabetes mellitus. The main features of this recommender system includes the consideration of users’ context while generating recommendations, its ability to recommend multi-types in the same time. The recommendation types include food, drink, physical exercise, and medication. Furthermore, the proposed recommender system is proactive, where the recommendations are pushed to the users, based on the context, without explicit query by them. A prototype was developed for the system, as well as simple Android mobile application. Artificial Neural Network was used to train the system. The results show an overall accuracy of 89.5%.
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