Ridesharing has received global popularity due to its convenience and cost efficiency for both drivers and passengers and its strong potential to contribute to the implementation of the UN Sustainable Development Goals. As a result, recent years have witnessed an explosion of research interest in the RSODP (Origin-Destination Prediction for Ridesharing) problem with the goal of predicting the future ridesharing requests and providing schedules for vehicles ahead of time. Most of the existing prediction models utilise Deep Learning. However, they fail to effectively consider both spatial and temporal dynamics. In this paper the Baselined Gated Attention Recurrent Network (BGARN), is proposed, which uses graph convolution with multi-head gated attention to extract spatial features, a recurrent module to extract temporal features, and a baselined transferring layer to calculate the final results. The model is implemented with PyTorch and DGL (Deep Graph Library) and is experimentally evaluated using the New York Taxi Demand Dataset. The results show that BGARN outperforms all the other existing models in terms of prediction accuracy.
翻译:由于对驾驶员和乘客来说都方便而且具有成本效益,而且具有促进执行联合国可持续发展目标的巨大潜力,分享已受到全球的欢迎,因此,近年来,对RESODP(Origin-Destion National Surveillation for Ride共享)问题的研究兴趣急剧增加,目的是预测未来的分享驾驶请求和提前提供车辆时间表。大多数现有预测模型都利用深层学习。但是,它们未能有效地考虑到空间和时间动态。本文提议采用基线GGateted注意经常网络(BGARN),利用图象与多头热门注意的热点组合来提取空间特征,一个经常性模块来提取时间特征,以及一个基线转移层来计算最终结果。模型与PyTorrch和DGL(深海图库)一起实施,并使用纽约出租车需求数据集进行实验性评估。结果显示,BGARN在预测准确性方面超越了所有其他现有模型。