Cross-city transfer learning: Applications and challenges for smart cities and sustainable transportation

IF 14.5 Q1 TRANSPORTATION
Ying Yang , Jiahao Zhan , Yang Liu , Qi Wang
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引用次数: 0

Abstract

Cross-city transfer learning (CCTL) has emerged as a crucial approach for managing the growing complexity of urban data and addressing the challenges posed by rapid urbanization. This paper provides a comprehensive review of recent advances in CCTL, with a focus on its applications in urban computing tasks, including prediction, detection, and deployment. We examine the role of CCTL in facilitating policy adaptation and influencing behavioral change. Specifically, we provide a systematic overview of widely used datasets, including traffic sensor data, GPS trajectory data, online social network data, and map data. Furthermore, we conduct an in-depth analysis of methods and evaluation metrics employed across different CCTL-based urban computing tasks. Finally, we emphasize the potential of cross-city policy transfer in promoting low-carbon and sustainable urban development. This review aims to serve as a reference for future urban development research and promote the practical implementation of CCTLs.
跨城市迁移学习:智慧城市和可持续交通的应用与挑战
跨城市迁移学习(CCTL)已成为管理日益复杂的城市数据和应对快速城市化带来的挑战的关键方法。本文全面回顾了CCTL的最新进展,重点介绍了CCTL在城市计算任务中的应用,包括预测、检测和部署。我们研究了CCTL在促进政策适应和影响行为改变方面的作用。具体而言,我们提供了广泛使用的数据集的系统概述,包括交通传感器数据,GPS轨迹数据,在线社交网络数据和地图数据。此外,我们对不同基于cctl的城市计算任务所采用的方法和评估指标进行了深入分析。最后,我们强调跨城市政策转移在促进低碳和可持续城市发展方面的潜力。本文旨在为未来城市发展研究提供参考,并促进cctl的实际实施。
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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CiteScore
15.20
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0.00%
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