Tiny Recursive Reasoning with Mamba-2 Attention Hybrid
arXiv cs.CL / 3/16/2026
💬 OpinionIdeas & Deep AnalysisModels & Research
Key Points
- The study investigates replacing Transformer blocks in TRM with Mamba-2 hybrid operators while keeping parameter counts nearly identical (6.83M vs 6.86M).
- On ARC-AGI-1, the Mamba-2 hybrid improves pass@2 by 2.0 percentage points (45.88% vs 43.88%) and shows larger gains at higher K (pass@100) by about 4.75%, with pass@1 remaining on par.
- The results suggest the hybrid preserves recursive reasoning capability within the scaffold and increases candidate coverage without harming top-1 selection.
- The work positions SSM-based operators as viable in recursive design and advances understanding of optimal mixing strategies for recursive reasoning.
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