English

Spatiotemporal Forecasting as Planning: A Model-Based Reinforcement Learning Approach with Generative World Models

Machine Learning 2025-10-13 v3 Artificial Intelligence

Abstract

To address the dual challenges of inherent stochasticity and non-differentiable metrics in physical spatiotemporal forecasting, we propose Spatiotemporal Forecasting as Planning (SFP), a new paradigm grounded in Model-Based Reinforcement Learning. SFP constructs a novel Generative World Model to simulate diverse, high-fidelity future states, enabling an "imagination-based" environmental simulation. Within this framework, a base forecasting model acts as an agent, guided by a beam search-based planning algorithm that leverages non-differentiable domain metrics as reward signals to explore high-return future sequences. These identified high-reward candidates then serve as pseudo-labels to continuously optimize the agent's policy through iterative self-training, significantly reducing prediction error and demonstrating exceptional performance on critical domain metrics like capturing extreme events.

Keywords

Cite

@article{arxiv.2510.04020,
  title  = {Spatiotemporal Forecasting as Planning: A Model-Based Reinforcement Learning Approach with Generative World Models},
  author = {Hao Wu and Yuan Gao and Xingjian Shi and Shuaipeng Li and Fan Xu and Fan Zhang and Zhihong Zhu and Weiyan Wang and Xiao Luo and Kun Wang and Xian Wu and Xiaomeng Huang},
  journal= {arXiv preprint arXiv:2510.04020},
  year   = {2025}
}
R2 v1 2026-07-01T06:17:36.504Z