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Population Density-Based Hospital Recommendation with Mobile LBS Big Data

机译:基于移动LBS大数据的基于人口密度的医院推荐

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The difficulty of getting medical treatment is one of major livelihood issues in China. Since patients lack prior knowledge about the spatial distribution and the capacity of hospitals, some hospitals have abnormally high or sporadic population densities. This paper presents a new model for estimating the spatiotemporal population density in each hospital based on location-based service (LBS) big data, which would be beneficial to guiding and dispersing outpatients. To improve the estimation accuracy, several approaches are proposed to denoise the LBS data and classify people by detecting their various behaviors. In addition, a long short-term memory (LSTM) based deep learning is presented to predict the trend of population density. By using Baidu large-scale LBS logs database, we apply the proposed model to 113 hospitals in Beijing, P. R. China, and constructed an online hospital recommendation system which can provide users with a hospital rank list basing the real-time population density information and the hospitals' basic information such as hospitals' levels and their distances. We also mine several interesting patterns from these LBS logs by using our proposed system.
机译:接受治疗的困难是中国主要的民生问题之一。由于患者缺乏有关医院的空间分布和能力的先验知识,因此某些医院的人口密度异常高或偶发。本文提出了一种基于位置服务大数据估计各医院时空人口密度的新模型,这将有助于指导和分散门诊病人。为了提高估计的准确性,提出了几种方法来对LBS数据进行去噪并通过检测人们的各种行为对其进行分类。此外,提出了基于长期短期记忆(LSTM)的深度学习来预测人口密度的趋势。通过使用百度大型LBS日志数据库,我们将该模型应用到中国北京的113家医院,并构建了一个在线医院推荐系统,该系统可以基于实时人口密度信息和以下信息为用户提供医院等级列表:医院的基本信息,例如医院的级别和距离。通过使用我们提出的系统,我们还从这些LBS日志中挖掘了几种有趣的模式。

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