Comparison of Multiple Models of Recommendation Systems

Haolei Liu, Lin Zhang
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Abstract

In patients’ medical service consumption behavior, patients’ choice of medical institution is an important link, which determines patients’ medical quality and medical cost, and even further affects the distribution of medical resources in the whole health service market. Patients may have problems such as high knowledge barrier and information redundancy in the process of choosing hospitals. Nowadays, with the continuous development of machine learning, the recommendation system using graph neural network has achieved good results in solving this kind of information overload problem. Therefore, we mainly focus on the application of the recommendation system in the process of patients choosing hospitals. Here we complete the construction of the initial data set through data simulation, and then we train and debug the six graph neural network recommendation system models. In addition, we propose a new comprehensive index to improve the traditional index, which is difficult to better represent the model performance. In the future, we plan to apply this research to our smart medical big data cloud platform. On the one hand, the cloud platform will provide a more solid data basis for our model; on the other hand, we can provide personalized medical recommendation services for platform users by using the recommendation system.
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推荐系统的多模型比较
在患者的医疗服务消费行为中,患者对医疗机构的选择是一个重要环节,它决定了患者的医疗质量和医疗成本,进而影响到整个医疗服务市场的医疗资源配置。患者在选择医院的过程中可能存在知识壁垒高、信息冗余等问题。如今,随着机器学习的不断发展,使用图神经网络的推荐系统在解决这类信息过载问题上取得了很好的效果。因此,我们主要研究推荐系统在患者选择医院过程中的应用。在这里我们通过数据仿真完成初始数据集的构建,然后对6个图神经网络推荐系统模型进行训练和调试。此外,我们提出了一种新的综合指标,以改进传统指标难以更好地代表模型性能。未来,我们计划将这项研究应用到我们的智能医疗大数据云平台上。一方面,云平台将为我们的模式提供更坚实的数据基础;另一方面,我们可以利用推荐系统为平台用户提供个性化的医疗推荐服务。
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