The study of human mobility is crucial due to its impact on several aspects of our society, such as disease spreading, urban planning, well-being, pollution, and more. The proliferation of digital mobility data, such as phone records, GPS traces, and social media posts, combined with the outstanding predictive power of artificial intelligence, triggered the application of deep learning to human mobility. In particular, the literature is focusing on three tasks: next-location prediction, i.e., predicting an individual's future locations; crowd flow prediction, i.e., forecasting flows on a geographic region; and trajectory generation, i.e., generating realistic individual trajectories. Existing surveys focus on single tasks, data sources, mechanistic or traditional machine learning approaches, while a comprehensive description of deep learning solutions is missing. This survey provides: (i) basic notions on mobility and deep learning; (ii) a review of data sources and public datasets; (iii) a description of deep learning models and (iv) a discussion about relevant open challenges. Our survey is a guide to the leading deep learning solutions to next-location prediction, crowd flow prediction, and trajectory generation. At the same time, it helps deep learning scientists and practitioners understand the fundamental concepts and the open challenges of the study of human mobility.
翻译:人的流动研究之所以至关重要,是因为它对我们社会的几个方面,例如疾病传播、城市规划、福祉、污染等等的影响。数字流动数据,例如电话记录、全球定位系统痕迹、社交媒体站等数字流动数据的扩散,加上人造智能的突出预测力,触发了对人的流动应用深层次学习,特别是文献侧重于三项任务:下一地点预测,即预测个人的未来地点;人群流动预测,即预测地理区域的流动情况;以及轨迹生成,即产生符合实际的个人轨迹。现有调查侧重于单项任务、数据来源、机械或传统机器学习方法,而缺少对深层次学习解决办法的全面描述。这一调查提供了:(一) 关于流动性和深层次学习的基本概念;(二) 审查数据来源和公共数据集;(三) 描述深层次学习模式,以及(四) 讨论相关的公开挑战。我们的调查为下一个地点预测、人群流动预测和基本轨迹生成的深层次学习解决方案提供了指南。同时,还帮助科学家了解和基本轨迹的学习。