1.7 KiB
source_url, ingested, sha256
| source_url | ingested | sha256 |
|---|---|---|
| https://arxiv.org/abs/2605.19376 | 2026-05-23 | unknown |
Generative Recursive Reasoning
- Authors: Junyeob Baek^1*, Mingyu Jo^1*, Minsu Kim^1,2, Mengye Ren^3, Yoshua Bengio^2,4, Sungjin Ahn^1,3†
- Institutions: 1 KAIST, 2 Mila – Québec AI Institute, 3 New York University, 4 Université de Montréal
- arXiv: 2605.19376 (v2, 2026-05-19)
- Category: cs.AI
- Project Page: https://ahn-ml.github.io/gram-website
Abstract
How should future neural reasoning systems implement extended computation? Recursive Reasoning Models (RRMs) offer a promising alternative to autoregressive sequence extension by performing iterative latent-state refinement with shared transition functions. Yet existing RRMs are largely deterministic, following a single latent trajectory and converging to a single prediction. GRAM turns recursive latent reasoning into probabilistic multi-trajectory computation, treating reasoning as a stochastic latent trajectory that enables multiple hypotheses, alternative solution strategies, and inference-time scaling through both recursive depth and parallel trajectory sampling. This yields a latent-variable generative model supporting both conditional reasoning p_θ(y|x) and unconditional generation p_θ(x). Trained with amortized variational inference, GRAM improves over deterministic recurrent and recursive baselines on structured reasoning and multi-solution constraint satisfaction tasks.
Key Contributions
- Formulates recursive reasoning as a latent-variable generative process
- Introduces width-based inference-time scaling (depth + parallel trajectories)
- Empirical evidence on Sudoku-Extreme, ARC-AGI, N-Queens, Graph Coloring, binarized MNIST