Passenger Demand Prediction with Cellular Footprints

Jing Chu, Kun Qian, Xu Wang, Lina Yao, Fu Xiao, Jianbo Li, Xin Miao, Zheng Yang
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引用次数: 22

Abstract

Accurate forecast of citywide passenger demand helps online car-hailing service providers to better schedule driver supplies. Previous research either uses only passenger order history and fails to capture the deep dependency of passenger demand, or is restricted on grid region partition that loses physical context. Recent advance in mobile traffic analysis has fostered understanding of city functions. In this paper, we propose FlowFlexDP, a demand prediction model that integrates regional crowd flow and applies to flexible region partition. Analysis on a cellular dataset covering 1.5 million users in a major city in China reveals strong correlation between passenger demand and crowd flow. FlowFlexDP extracts both order history and crowd flow from cellular data, and adopts Graph Convolutional Neural Network to adapt prediction for regions of arbitrary shapes and sizes in a city. Evaluation on a large scale data set of DiDi Chuxing from cellular data shows that FlowFlexDP accurately predicts passenger demand and outperforms the state-of-the-art demand prediction methods.
基于蜂窝足迹的乘客需求预测
对全市乘客需求的准确预测有助于网约车服务提供商更好地安排司机供应。以往的研究要么只使用乘客订单历史记录,未能捕捉到乘客需求的深层依赖关系,要么受到网格区域划分的限制,失去了物理上下文。移动交通分析的最新进展促进了对城市功能的理解。本文提出了一种融合区域人流的需求预测模型FlowFlexDP,并将其应用于柔性区域划分。对覆盖中国某大城市150万用户的蜂窝数据集的分析显示,乘客需求和人群流量之间存在很强的相关性。FlowFlexDP从细胞数据中提取订单历史和人群流量,并采用图卷积神经网络对城市中任意形状和大小的区域进行适应性预测。基于蜂窝数据的大规模滴滴出行数据集的评估表明,FlowFlexDP能够准确预测乘客需求,并且优于最先进的需求预测方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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