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Complexities' day-to-day dynamic evolution analysis and prediction for a Didi taxi trip network based on complex network theory

机译:基于复杂网络理论的DIDI出租车旅行网络的复杂性的日常动态演进分析与预测

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摘要

Didi Dache is the most popular taxi order mobile app in China, which provides online taxi-hailing service. The obtained big database from this app could be used to analyze the complexities' day-to-day dynamic evolution of Didi taxi trip network (DTTN) from the level of complex network dynamics. First, this paper proposes the data cleaning and modeling methods for expressing Nanjing's DTTN as a complex network. Second, the three consecutive weeks' data are cleaned to establish 21 DTTNs based on the proposed big data processing technology. Then, multiple topology measures that characterize the complexities' day-to-day dynamic evolution of these networks are provided. Third, these measures of 21 DTTNs are calculated and subsequently explained with actual implications. They are used as a training set for modeling the BP neural network which is designed for predicting DTTN complexities evolution. Finally, the reliability of the designed BP neural network is verified by comparing with the actual data and the results obtained from ARIMA method simultaneously. Because network complexities are the basis for modeling cascading failures and conducting link prediction in complex system, this proposed research framework not only provides a novel perspective for analyzing DTTN from the level of system aggregated behavior, but can also be used to improve the DTTN management level.
机译:Didi Doache是​​中国最受欢迎的出租车订单移动应用程序,提供在线出租车服务。从该应用程序中获得的大数据库可用于分析来自复杂网络动态水平的DIDI出租车行程网络(DTTN)的复杂性“日常动态演变。首先,本文提出了用于表达南京DTTN作为复杂网络的数据清洁和建模方法。其次,根据所提出的大数据处理技术,清洁连续三周的数据以建立21个DTTN。然后,提供了表征这些网络的复杂性日常动态演进的多种拓扑措施。第三,计算21个DTTN的措施并随后用实际影响解释。它们用作用于建模BP神经网络的训练,该网络是用于预测DTTN复杂性演化的设计。最后,通过与实际数据相比同时从Arima方法获得的结果进行比较来验证设计的BP神经网络的可靠性。由于网络复杂性是在复杂系统中建模级联故障和进行链路预测的基础,因此这一提出的研究框架不仅提供了一种用于分析来自系统聚合行为的DTTN的小说视角,而且还可用于改善DTTN管理级别。

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