How Reinforcement Learning After Next-Token Prediction Facilitates Learning

Abstract

Recent advances in reasoning domains with neural networks have primarily been enabled by a training recipe that optimizes Large Language Models, previously trained to predict the next-token in a sequence, with reinforcement learning algorithms. We introduce a framework to study the success of this paradigm, and we theoretically expose the optimization mechanisms by which reinforcement learning improves over next-token prediction in this setting. We study learning from mixture distributions of short and long “chain-of-thought” sequences encoding a single task. In particular, when the task consists of predicting the parity of $d$ bits and long sequences are rare, we show how reinforcement learning after next-token prediction enables autoregressive transformers to generalize, whereas mere next-token prediction requires extreme statistical or computational resources to do so. We further explain how reinforcement learning leverages increased test-time computation, manifested in longer responses, to facilitate this learning process. In a simplified setting, we theoretically prove that autoregressive linear models following this training recipe can efficiently learn to predict the parity of $d$ bits as long as the proportion of long demonstrations in the data mix is not exponentially small in the input dimension $d$. Finally, we demonstrate these same phenomena in other settings, including the post-training of Llama-series models on mixture variations of common mathematical reasoning benchmarks.

Cite

Text

Tsilivis et al. "How Reinforcement Learning After Next-Token Prediction Facilitates Learning." International Conference on Learning Representations, 2026.

Markdown

[Tsilivis et al. "How Reinforcement Learning After Next-Token Prediction Facilitates Learning." International Conference on Learning Representations, 2026.](https://mlanthology.org/iclr/2026/tsilivis2026iclr-reinforcement/)

BibTeX

@inproceedings{tsilivis2026iclr-reinforcement,
  title     = {{How Reinforcement Learning After Next-Token Prediction Facilitates Learning}},
  author    = {Tsilivis, Nikolaos and Malach, Eran and Ullrich, Karen and Kempe, Julia},
  booktitle = {International Conference on Learning Representations},
  year      = {2026},
  url       = {https://mlanthology.org/iclr/2026/tsilivis2026iclr-reinforcement/}
}