AICLFeb 9

CoRefine: Confidence-Guided Self-Refinement for Adaptive Test-Time Compute

arXiv:2602.08948v12 citationsh-index: 27Has Code
Originality Incremental advance
AI Analysis

This addresses the problem of excessive compute in LLM reasoning for AI researchers and practitioners, offering an incremental improvement through adaptive control mechanisms.

The paper tackles the high computational cost of test-time scaling in Large Language Models by introducing CoRefine, a confidence-guided self-refinement method that reduces token usage by roughly 190-fold while maintaining competitive accuracy, achieving 92.6% precision when confidently halting.

Large Language Models (LLMs) often rely on test-time scaling via parallel decoding (for example, 512 samples) to boost reasoning accuracy, but this incurs substantial compute. We introduce CoRefine, a confidence-guided self-refinement method that achieves competitive accuracy using a fraction of the tokens via a lightweight 211k-parameter Conv1D controller atop a frozen LLM. The controller consumes full-trace confidence to decide whether to halt, re-examine, or try a different approach, enabling targeted self-correction with an average of 2.7 refinement steps per problem and roughly 190-fold token reduction relative to 512-sample baselines. Across diverse reasoning benchmarks and three open-source models, the controller achieves 92.6 percent precision when it confidently halts, indicating that confidence dynamics reliably signal correctness without ground-truth verification. We extend this to CoRefine-Tree, a hybrid sequential-parallel variant that adaptively balances exploration and exploitation, with easy serving integration and verifier compatibility. By treating confidence as a control signal rather than a correctness guarantee, CoRefine provides a modular primitive for scalable reasoning and agentic settings with imperfect verifiers.

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