基于图卷积的出发地矩阵预测:客运需求建模的新视角

Yuandong Wang, Hongzhi Yin, Hongxu Chen, Tianyu Wo, Jie Xu, Kai Zheng
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引用次数: 166

摘要

网约车应用越来越受欢迎,为司机和乘客提供方便的乘车服务,尤其是在北京或纽约等大都市。为了获得乘客的出行模式,网约车服务平台需要提前预测从一个地区到另一个地区的乘客需求数量。我们将这个问题表述为原点-目的地矩阵预测(ODMP)问题。虽然这个问题对于大规模的乘车服务提供商来说是必不可少的,可以帮助他们做出决策,并且一些提供商已经公开提出了这个问题,但是现有的研究并没有很好地解决这个问题。其中一个主要原因是ODMP问题比常见的需求预测更具挑战性。除了一个地区的需求数量外,还需要模型预测这些需求的目的地。此外,数据稀疏性也是一个严重的问题。为了有效地解决这一问题,我们提出了一种统一的基于网格嵌入的多任务学习(GEML)模型,该模型由两个部分组成,分别关注空间和时间信息。网格嵌入部分用于模拟乘客的空间移动模式和不同区域的相邻关系,其预加权聚合器旨在感知数据的稀疏性和范围。多任务学习框架侧重于建模时间属性和捕获ODMP问题的几个目标。我们的模型的评估是在UCAR和滴滴的真实运营数据集上进行的。实验结果证明了我们的GEML相对于最先进的方法的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Origin-Destination Matrix Prediction via Graph Convolution: a New Perspective of Passenger Demand Modeling
Ride-hailing applications are becoming more and more popular for providing drivers and passengers with convenient ride services, especially in metropolises like Beijing or New York. To obtain the passengers' mobility patterns, the online platforms of ride services need to predict the number of passenger demands from one region to another in advance. We formulate this problem as an Origin-Destination Matrix Prediction (ODMP) problem. Though this problem is essential to large-scale providers of ride services for helping them make decisions and some providers have already put it forward in public, existing studies have not solved this problem well. One of the main reasons is that the ODMP problem is more challenging than the common demand prediction. Besides the number of demands in a region, it also requires the model to predict the destinations of them. In addition, data sparsity is a severe issue. To solve the problem effectively, we propose a unified model, Grid-Embedding based Multi-task Learning (GEML) which consists of two components focusing on spatial and temporal information respectively. The Grid-Embedding part is designed to model the spatial mobility patterns of passengers and neighboring relationships of different areas, the pre-weighted aggregator of which aims to sense the sparsity and range of data. The Multi-task Learning framework focuses on modeling temporal attributes and capturing several objectives of the ODMP problem. The evaluation of our model is conducted on real operational datasets from UCAR and Didi. The experimental results demonstrate the superiority of our GEML against the state-of-the-art approaches.
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