This paper details our solution to Traffic4cast 2020. Similar to Traffic4cast 2019, Traffic4cast 2020 challenged its contestants to develop algorithms that can predict the future traffic states of big cities. Our team tackled this challenge on two fronts. We studied the importance of feature and loss function design, and achieved significant improvement to the best performing U-Net solution from last year. We also explored the use of Graph Neural Networks and introduced a novel ensemble GNN architecture which outperformed the GNN solution from last year. While our GNN was improved, it was still unable to match the performance of U-Nets and the potential reasons for this shortfall were discussed. Our final solution, an ensemble of our U-Net and GNN, achieved the 4th place solution in Traffic4cast 2020.
翻译:本文详细介绍了2020年交通流量4cast的解决方案。和2019年交通量4cast一样,2020年交通量4cast也挑战竞争对手开发能够预测大城市未来交通状况的算法。我们的团队从两个方面应对了这一挑战。我们研究了特征和损失功能设计的重要性,并大大改进了去年以来最佳的U-Net解决方案。我们还探索了图形神经网络的使用,并引入了比去年GNN解决方案更好的新型连锁GNN架构。虽然我们的GNN得到了改进,但仍然无法匹配U-Net的性能和这一缺口的潜在原因。我们的最后解决方案,即我们的U-Net和GNNN的组合,在2020年交通量4中实现了第4位解决方案。