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A Smart Recommender Based on Hybrid Learning Methods for Personal Well-Being Services

机译:基于混合学习方法的个人健康服务推荐者

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摘要

The main focus of the paper is to propose a smart recommender system based on the methods of hybrid learning for personal well-being services, called a smart recommender system of hybrid learning (SRHL). The essential health factor is considered to be personal lifestyle, with the help of a critical examination of various disciplines. Integrating the recommender system effectively contributes to the prevention of disease, and it also leads to a reduction in treatment cost, which contributes to an improvement in the quality of life. At the same time, there exist various challenges within the recommender system, mainly cold start and scalability. To effectively address the inefficiencies, we propose combined hybrid methods in regard to machine learning. The primary aim of this learning method is to integrate the most effective and efficient learning algorithms to examine how combined hybrid filtering can help to improve the cold star problem efficiently in the provision of personalized well-being in regard to health food service. These methods include: (1) switching among content-based and collaborative filtering; (2) identifying the user context with the integration of dynamic filtering; and (3) learning the profiles with the help of processing and screening of reflecting feedback loops. The experimental results were evaluated by using three absolute error measures, providing comparable results with other studies relative to machine learning domains. The effects of using the hybrid learning method are gathered with the help of the experimental results. Our experiments also show that the hybrid method improves accuracy by 14.61% of the average error predicted in the recommender systems in comparison to the collaborative methods, which mainly focus on the computation of similar entities.
机译:本文的主要重点是提出一种基于混合学习方法的个人幸福服务智能推荐系统,称为混合学习智能推荐系统(SRHL)。在各种学科的严格检查的帮助下,基本健康因素被认为是个人生活方式。整合推荐系统有效地有助于预防疾病,并且还可以降低治疗成本,从而有助于改善生活质量。同时,推荐系统存在各种挑战,主要是冷启动和可伸缩性。为了有效地解决效率低下的问题,我们针对机器学习提出了混合方法。这种学习方法的主要目标是集成最有效的学习算法,以检查混合滤波如何在提供有关健康食品服务的个性化幸福感方面如何有效地改善冷星问题。这些方法包括:(1)在基于内容的过滤和协作过滤之间切换; (2)通过集成动态过滤识别用户上下文; (3)在处理和筛选反射反馈回路的帮助下学习配置文件。通过使用三种绝对误差度量来评估实验结果,从而提供与其他有关机器学习领域的研究结果相当的结果。借助实验结果来收集使用混合学习方法的效果。我们的实验还表明,与协作方法相比,混合方法将精度提高了推荐系统中预测的平均误差的14.61%,而协作方法主要关注于相似实体的计算。

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