SIITLGOct 26, 2025

JiuTian Chuanliu: A Large Spatiotemporal Model for General-purpose Dynamic Urban Sensing

arXiv:2510.23662v11 citationsh-index: 11ACM Trans Intell Syst Technol
Originality Incremental advance
AI Analysis

This addresses urban sensing challenges for researchers and practitioners by providing a unified framework, though it appears incremental as it builds on self-supervised learning and dynamic graph methods.

The paper tackles the problem of insufficient modeling and limited applicability in human mobility analysis by proposing a large spatiotemporal model, GDHME, which learns general-purpose embeddings from massive mobility data and supports various urban sensing tasks, with deployment as the JiuTian ChuanLiu Big Model.

As a window for urban sensing, human mobility contains rich spatiotemporal information that reflects both residents' behavior preferences and the functions of urban areas. The analysis of human mobility has attracted the attention of many researchers. However, existing methods often address specific tasks from a particular perspective, leading to insufficient modeling of human mobility and limited applicability of the learned knowledge in various downstream applications. To address these challenges, this paper proposes to push massive amounts of human mobility data into a spatiotemporal model, discover latent semantics behind mobility behavior and support various urban sensing tasks. Specifically, a large-scale and widely covering human mobility data is collected through the ubiquitous base station system and a framework named General-purpose and Dynamic Human Mobility Embedding (GDHME) for urban sensing is introduced. The framework follows the self-supervised learning idea and contains two major stages. In stage 1, GDHME treats people and regions as nodes within a dynamic graph, unifying human mobility data as people-region-time interactions. An encoder operating in continuous-time dynamically computes evolving node representations, capturing dynamic states for both people and regions. Moreover, an autoregressive self-supervised task is specially designed to guide the learning of the general-purpose node embeddings. In stage 2, these representations are utilized to support various tasks. To evaluate the effectiveness of our GDHME framework, we further construct a multi-task urban sensing benchmark. Offline experiments demonstrate GDHME's ability to automatically learn valuable node features from vast amounts of data. Furthermore, our framework is used to deploy the JiuTian ChuanLiu Big Model, a system that has been presented at the 2023 China Mobile Worldwide Partner Conference.

Foundations

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