English

Dynamic Tokenization via Reinforcement Patching: End-to-end Training and Zero-shot Transfer

Machine Learning 2026-03-30 v1 Artificial Intelligence Machine Learning

Abstract

Efficiently aggregating spatial or temporal horizons to acquire compact representations has become a unifying principle in modern deep learning models, yet learning data-adaptive representations for long-horizon sequence data, especially continuous sequences like time series, remains an open challenge. While fixed-size patching has improved scalability and performance, discovering variable-sized, data-driven patches end-to-end often forces models to rely on soft discretization, specific backbones, or heuristic rules. In this work, we propose Reinforcement Patching (ReinPatch), the first framework to jointly optimize a sequence patching policy and its downstream sequence backbone model using reinforcement learning. By formulating patch boundary placement as a discrete decision process optimized via Group Relative Policy Gradient (GRPG), ReinPatch bypasses the need for continuous relaxations and performs dynamic patching policy optimization in a natural manner. Moreover, our method allows strict enforcement of a desired compression rate, freeing the downstream backbone to scale efficiently, and naturally supports multi-level hierarchical modeling. We evaluate ReinPatch on time-series forecasting datasets, where it demonstrates compelling performance compared to state-of-the-art data-driven patching strategies. Furthermore, our detached design allows the patching module to be extracted as a standalone foundation patcher, providing the community with visual and empirical insights into the segmentation behaviors preferred by a purely performance-driven neural patching strategy.

Keywords

Cite

@article{arxiv.2603.26097,
  title  = {Dynamic Tokenization via Reinforcement Patching: End-to-end Training and Zero-shot Transfer},
  author = {Yulun Wu and Sravan Kumar Ankireddy and Samuel Sharpe and Nikita Seleznev and Dehao Yuan and Hyeji Kim and Nam H. Nguyen},
  journal= {arXiv preprint arXiv:2603.26097},
  year   = {2026}
}
R2 v1 2026-07-01T11:40:16.342Z