AutoSTF: Decoupled Neural Architecture Search for Cost-Effective Automated Spatio-Temporal Forecasting
Spatio-temporal forecasting is a critical component of various smart city applications, such as transportation optimization, energy management, and socio-economic analysis. Recently, several automated spatio-temporal forecasting methods have been proposed to automatically search the optimal neural n...
Saved in:
Main Authors | , , , |
---|---|
Format | Journal Article |
Language | English |
Published |
24.09.2024
|
Subjects | |
Online Access | Get full text |
Cover
Loading…
Summary: | Spatio-temporal forecasting is a critical component of various smart city
applications, such as transportation optimization, energy management, and
socio-economic analysis. Recently, several automated spatio-temporal
forecasting methods have been proposed to automatically search the optimal
neural network architecture for capturing complex spatio-temporal dependencies.
However, the existing automated approaches suffer from expensive neural
architecture search overhead, which hinders their practical use and the further
exploration of diverse spatio-temporal operators in a finer granularity. In
this paper, we propose AutoSTF, a decoupled automatic neural architecture
search framework for cost-effective automated spatio-temporal forecasting. From
the efficiency perspective, we first decouple the mixed search space into
temporal space and spatial space and respectively devise representation
compression and parameter-sharing schemes to mitigate the parameter explosion.
The decoupled spatio-temporal search not only expedites the model optimization
process but also leaves new room for more effective spatio-temporal dependency
modeling. From the effectiveness perspective, we propose a multi-patch transfer
module to jointly capture multi-granularity temporal dependencies and extend
the spatial search space to enable finer-grained layer-wise spatial dependency
search. Extensive experiments on eight datasets demonstrate the superiority of
AutoSTF in terms of both accuracy and efficiency. Specifically, our proposed
method achieves up to 13.48x speed-up compared to state-of-the-art automatic
spatio-temporal forecasting methods while maintaining the best forecasting
accuracy. |
---|---|
DOI: | 10.48550/arxiv.2409.16586 |