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APS-PBW: The Analysis and Prediction System of Customer Flow Data Based on WIFI Probes

机译:APS-PBW:基于WIFI探针的客户流数据分析预测系统

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The collection, analysis and prediction of the customer flow data can provide all-dimensional data reference for the refined operating of the enterprise. In the meantime, analysis system of the customer flow data can not only help the enterprise detect the marketing effectiveness, but also discover potential opportunities and improvement measures, providing all-round data reference for the efficient and sophisticated operation of the enterprise. We build the analysis and prediction system of customer flow data based on WIFI probe (APS-PBW). APS-PBW takes the WIFI probe as the data collector, which can scan the mobile devices within its range during a short time interval, and also get the information about the MAC addresses, the reference distances and the time stamps of mobile phones. Then, we do some statistical analyses for the indexes of the records from the customer's angle and the store's angle, which include the length of the customer's entry, the cycle of the customer's visit, the customer flow of the store, the number of new and old customers, etc. Meanwhile, SARIMA model and BP neural network model are applied to the system to predict the customer flow data respectively. To conclude, the framework of our system can be divided into three parts: the collection of customer flow data based on the WIFI probe, the analysis and prediction of the customer flow data by the means of SARIMA model and BP neural network model, and the system construction. We implement a series of experiments to test the performance of the prediction system about the customer flow data. The experimental results show that, compared with BP neural network model, SARIMA model is more suitable and also more accurate for the prediction of the customer flow data.
机译:客户流数据的收集,分析和预测可以为企业的精细化运营提供全方位的数据参考。同时,客户流数据分析系统不仅可以帮助企业检测营销效果,还可以发现潜在的机会和改进措施,为企业高效,复杂的运营提供全面的数据参考。我们建立了基于WIFI探针(APS-PBW)的客户流数据分析和预测系统。 APS-PBW以WIFI探针作为数据收集器,它可以在很短的时间间隔内扫描其范围内的移动设备,并获得有关MAC地址,参考距离和手机时间戳的信息。然后,我们从顾客的角度和商店的角度对记录的索引进行统计分析,包括顾客进入的时间长度,顾客的访问周期,商店的顾客流量,新顾客的数量和数量。同时,将SARIMA模型和BP神经网络模型分别应用到系统中以预测客户流量数据。总而言之,我们的系统框架可分为三个部分:基于WIFI探针的客户流数据收集,借助SARIMA模型和BP神经网络模型对客户流数据进行分析和预测,以及系统建设。我们实施了一系列实验,以测试有关客户流数据的预测系统的性能。实验结果表明,与BP神经网络模型相比,SARIMA模型更适用于客户流量数据的预测,并且更加准确。

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