English

Synthetic bootstrapped pretraining

Computation and Language 2025-12-16 v3 Artificial Intelligence

Abstract

We introduce Synthetic Bootstrapped Pretraining (SBP), a language model (LM) pretraining procedure that first learns a model of relations between documents from the pretraining dataset and then leverages it to synthesize a vast new corpus for joint training. While the standard pretraining teaches LMs to learn causal correlations among tokens within a single document, it is not designed to efficiently model the rich, learnable inter-document correlations that can potentially lead to better performance. We validate SBP by designing a compute-matched pretraining setup and pretrain a 3B-parameter and a 6B-parameter model on up to 1T tokens from scratch. We find SBP consistently improves upon a strong repetition baseline and delivers up to 60% of performance improvement attainable by an oracle upper bound with access to 20x more unique data. Qualitative analysis reveals that the synthesized documents go beyond mere paraphrases -- SBP first abstracts a core concept from the seed material and then crafts a new narration on top of it. Besides strong empirical performance, SBP admits a natural Bayesian interpretation: the synthesizer implicitly learns to abstract the latent concepts shared between related documents.

Keywords

Cite

@article{arxiv.2509.15248,
  title  = {Synthetic bootstrapped pretraining},
  author = {Zitong Yang and Aonan Zhang and Hong Liu and Tatsunori Hashimoto and Emmanuel Candès and Chong Wang and Ruoming Pang},
  journal= {arXiv preprint arXiv:2509.15248},
  year   = {2025}
}
R2 v1 2026-07-01T05:44:31.165Z