Damba-ST: Domain-Adaptive Mamba for Efficient Urban Spatio-Temporal Prediction
Rui An, Yifeng Zhang, Ziran Liang, Wenqi Fan, Yuxuan Liang, Xuequn Shang, Qing Li

TL;DR
Damba-ST is a novel domain-adaptive Mamba-based model that efficiently predicts urban spatio-temporal data across diverse regions, overcoming heterogeneity challenges and enabling zero-shot generalization.
Contribution
The paper introduces Damba-ST, which enhances Mamba with domain adaptation techniques, allowing efficient and scalable urban spatio-temporal prediction across heterogeneous domains.
Findings
Achieves state-of-the-art prediction accuracy.
Demonstrates strong zero-shot generalization to new urban environments.
Maintains linear computational complexity for scalability.
Abstract
Training urban spatio-temporal foundation models that generalize well across diverse regions and cities is critical for deploying urban services in unseen or data-scarce regions. Recent studies have typically focused on fusing cross-domain spatio-temporal data to train unified Transformer-based models. However, these models suffer from quadratic computational complexity and high memory overhead, limiting their scalability and practical deployment. Inspired by the efficiency of Mamba, a state space model with linear time complexity, we explore its potential for efficient urban spatio-temporal prediction. However, directly applying Mamba as a spatio-temporal backbone leads to negative transfer and severe performance degradation. This is primarily due to spatio-temporal heterogeneity and the recursive mechanism of Mamba's hidden state updates, which limit cross-domain generalization. To…
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Taxonomy
TopicsHuman Mobility and Location-Based Analysis · Traffic Prediction and Management Techniques · Data Management and Algorithms
