English

Tiny Recursive Reasoning with Mamba-2 Attention Hybrid

Artificial Intelligence 2026-03-16 v2 Computation and Language

Abstract

Recent work on recursive reasoning models like TRM demonstrates that tiny networks (7M parameters) can achieve strong performance on abstract reasoning tasks through latent recursion -- iterative refinement in hidden representation space without emitting intermediate tokens. This raises a natural question about operator choice: Mamba-2's state space recurrence is itself a form of iterative refinement, making it a natural candidate for recursive reasoning -- but does introducing Mamba-2 into the recursive scaffold preserve reasoning capability? We investigate this by replacing the Transformer blocks in TRM with Mamba-2 hybrid operators while maintaining parameter parity (6.83M vs 6.86M parameters). On ARC-AGI-1, we find that the hybrid improves pass@2 (the official metric) by +2.0\% (45.88\% vs 43.88\%) and consistently outperforms at higher K values (+4.75\% at pass@100), whilst maintaining pass@1 parity. This suggests improved candidate coverage -- the model generates correct solutions more reliably -- with similar top-1 selection. Our results validate that Mamba-2 hybrid operators preserve reasoning capability within the recursive scaffold, establishing SSM-based operators as viable candidates in the recursive operator design space and taking a first step towards understanding the best mixing strategies for recursive reasoning.

Keywords

Cite

@article{arxiv.2602.12078,
  title  = {Tiny Recursive Reasoning with Mamba-2 Attention Hybrid},
  author = {Wenlong Wang and Fergal Reid},
  journal= {arXiv preprint arXiv:2602.12078},
  year   = {2026}
}

Comments

Published at ICLR 2026 Latent & Implicit Thinking Workshop

R2 v1 2026-07-01T10:33:54.944Z