Wang Haoxiang, Che Xiaoping, Chang Enyao, Qu Chenxin, Zhang Ganghua, Zhou Zihan, Wei Zhenlin, Lyu Gengyu, Li Pengfei
Guanghua School of Management, Peking University, Beijing, China.
School of Software Engineering, Beijing Jiaotong University, Beijing, China.
Sci Rep. 2025 Mar 28;15(1):10776. doi: 10.1038/s41598-025-94987-y.
Cross-city transfer learning aims to apply the knowledge and model from data-rich cities to data-poor cities to solve the cold start problem. Existing methods directly transfer the model constructed from developed cities to underdeveloped cities without considering the similarity between them, which leads to a potential transfer mismatch problem, and in turn, decreases the performance of transfer results. Meanwhile, existing transfer learning methods cannot effectively extract the time series features of the data, resulting in the inability to achieve adaptive positive migration across cities. To solve this problem, we propose a similarity-based cross-city transfer learning method named TransCSM, which embeds the urban similarity into an adaptation transfer learning framework to achieve desired data transfer. Specifically, we first constructed an urban similarity model, which utilizes the urban POI (Point Of Interest) data to group the cities with similar characteristics into the same cluster. Then, we build a feature extractor network, that uses convolution neural network (CNN) and Gated Recurrent Unit (GRU) to extract more representative features of time series data. Afterwards, we build an adaptation transfer learning framework to achieve data transfer within the same city cluster, which ensures the reliability of cross-city data transferring results. Finally, we evaluate our proposed method in many public POI datasets from Baidu Map API, and enormous results have demonstrated that our proposed method can achieve superior performance against state-of-the-art methods.
跨城市迁移学习旨在将数据丰富城市的知识和模型应用于数据匮乏城市,以解决冷启动问题。现有方法直接将从发达城市构建的模型迁移到欠发达城市,而不考虑它们之间的相似性,这会导致潜在的迁移不匹配问题,进而降低迁移结果的性能。同时,现有的迁移学习方法无法有效提取数据的时间序列特征,导致无法实现跨城市的自适应正向迁移。为了解决这个问题,我们提出了一种基于相似性的跨城市迁移学习方法TransCSM,该方法将城市相似性嵌入到自适应迁移学习框架中,以实现所需的数据迁移。具体来说,我们首先构建了一个城市相似性模型,该模型利用城市兴趣点(POI)数据将具有相似特征的城市分组到同一个集群中。然后,我们构建一个特征提取器网络,该网络使用卷积神经网络(CNN)和门控循环单元(GRU)来提取时间序列数据更具代表性的特征。之后,我们构建一个自适应迁移学习框架,以在同一个城市集群内实现数据迁移,这确保了跨城市数据迁移结果的可靠性。最后,我们在来自百度地图API的许多公共POI数据集中评估了我们提出的方法,大量结果表明,我们提出的方法相对于现有方法可以实现卓越的性能。