Get Rid of Task Isolation: A Continuous Multi-task Spatio-Temporal Learning Framework
Spatiotemporal learning has become a pivotal technique to enable urban intelligence. Traditional spatiotemporal models mostly focus on a specific task by assuming a same distribution between training and testing sets. However, given that urban systems are usually dynamic, multi-sourced with imbalanc...
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Zusammenfassung: | Spatiotemporal learning has become a pivotal technique to enable urban
intelligence. Traditional spatiotemporal models mostly focus on a specific task
by assuming a same distribution between training and testing sets. However,
given that urban systems are usually dynamic, multi-sourced with imbalanced
data distributions, current specific task-specific models fail to generalize to
new urban conditions and adapt to new domains without explicitly modeling
interdependencies across various dimensions and types of urban data. To this
end, we argue that there is an essential to propose a Continuous Multi-task
Spatio-Temporal learning framework (CMuST) to empower collective urban
intelligence, which reforms the urban spatiotemporal learning from
single-domain to cooperatively multi-dimensional and multi-task learning.
Specifically, CMuST proposes a new multi-dimensional spatiotemporal interaction
network (MSTI) to allow cross-interactions between context and main
observations as well as self-interactions within spatial and temporal aspects
to be exposed, which is also the core for capturing task-level commonality and
personalization. To ensure continuous task learning, a novel Rolling Adaptation
training scheme (RoAda) is devised, which not only preserves task uniqueness by
constructing data summarization-driven task prompts, but also harnesses
correlated patterns among tasks by iterative model behavior modeling. We
further establish a benchmark of three cities for multi-task spatiotemporal
learning, and empirically demonstrate the superiority of CMuST via extensive
evaluations on these datasets. The impressive improvements on both few-shot
streaming data and new domain tasks against existing SOAT methods are achieved.
Code is available at https://github.com/DILab-USTCSZ/CMuST. |
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DOI: | 10.48550/arxiv.2410.10524 |