TrigReason: Trigger-Based Collaboration between Small and Large Reasoning Models
arXiv cs.AI / 4/17/2026
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Key Points
- The paper analyzes where small reasoning models (SRMs) fail when used to speed up large reasoning models (LRMs), identifying three key risks: path divergence, cognitive overload, and recovery inability.
- It proposes TrigReason, a trigger-based collaboration framework that replaces continuous LRM polling with selective LRM intervention.
- TrigReason delegates most reasoning to the SRM and triggers LRM help for strategic priming, extraordinary overconfidence, or when the reasoning enters unproductive loops.
- Experiments on AIME24, AIME25, and GPQA-D show TrigReason achieves accuracy comparable to full LRMs and SpecReason while offloading 1.70x–4.79x more reasoning steps to SRMs.
- In edge-cloud deployments, TrigReason cuts latency by 43.9% and reduces API cost by 73.3%, and the code is released on GitHub.
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