论文标题
专家的时空混合物的封闭式合奏,用于乘车系统中的多任务学习
Gated Ensemble of Spatio-temporal Mixture of Experts for Multi-task Learning in Ride-hailing System
论文作者
论文摘要
乘车系统需要有效地管理动态需求和供应,以确保最佳的服务提供,定价策略和运营效率。以任务和城市方式分别设计时空预测模型,以预测乘车系统中的需求和供求需求差距为扩大的运输网络公司带来负担。 Therefore, a multi-task learning architecture is proposed in this study by developing gated ensemble of spatio-temporal mixture of experts network (GESME-Net) with convolutional recurrent neural network (CRNN), convolutional neural network (CNN), and recurrent neural network (RNN) for simultaneously forecasting these spatio-temporal tasks in a city as well as across different cities.此外,任务适应层与多任务学习中学习联合表示的体系结构集成在一起,并揭示了预测中使用的输入功能的贡献。提出的架构通过DIDI CHUXING的数据进行了测试:(i)同时预测北京的需求和供求需求差距,以及(ii)同时预测整个成都和Xian的需求。在这两种情况下,我们提出的体系结构的模型都超过了单任务和多任务深度学习基准和基于合奏的机器学习算法。
Ride-hailing system requires efficient management of dynamic demand and supply to ensure optimal service delivery, pricing strategies, and operational efficiency. Designing spatio-temporal forecasting models separately in a task-wise and city-wise manner to forecast demand and supply-demand gap in a ride-hailing system poses a burden for the expanding transportation network companies. Therefore, a multi-task learning architecture is proposed in this study by developing gated ensemble of spatio-temporal mixture of experts network (GESME-Net) with convolutional recurrent neural network (CRNN), convolutional neural network (CNN), and recurrent neural network (RNN) for simultaneously forecasting these spatio-temporal tasks in a city as well as across different cities. Furthermore, a task adaptation layer is integrated with the architecture for learning joint representation in multi-task learning and revealing the contribution of the input features utilized in prediction. The proposed architecture is tested with data from Didi Chuxing for: (i) simultaneously forecasting demand and supply-demand gap in Beijing, and (ii) simultaneously forecasting demand across Chengdu and Xian. In both scenarios, models from our proposed architecture outperformed the single-task and multi-task deep learning benchmarks and ensemble-based machine learning algorithms.