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

    Author(s)
    Zhang, Lin
    Lu, Jian
    Zhou, Jialin
    Zhu, Jinqing
    Li, Yunxuan
    Wan, Qian
    Griffith University Author(s)
    Zhou, Jialin
    Year published
    2018
    Metadata
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    Abstract
    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 ...
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    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.
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    Journal Title
    Modern Physics Letters B
    Volume
    32
    Issue
    9
    DOI
    https://doi.org/10.1142/S0217984918500628
    Subject
    Mathematical sciences
    Algebraic structures in mathematical physics
    Physical sciences
    Publication URI
    http://hdl.handle.net/10072/380781
    Collection
    • Journal articles

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