English

Natural Language Edge Labelling: Decoupling Intent from Execution in Structured LM Reasoning

Artificial Intelligence 2025-10-07 v1

Abstract

Controllers for structured LM reasoning (e.g., Chain-of-Thought, self-consistency, and Tree-of-Thoughts) often entangle what to try next with how to execute it, exposing only coarse global knobs and yielding brittle, compute-inefficient, and hard-to-audit behavior. We introduce Natural Language Edge Labelling (NLEL), a labeller-tuner overlay that attaches a free-form natural-language directive to each search edge and translates it into a schema-bounded control vector for decoding, search (branch quotas, exploration β\beta), generation bundle size, retrieval mixtures, and verification passes. A labeller Λ\Lambda emits labels from the parent state and a compact context; a tuner Ψ\Psi maps (P,L,C)Π(P, L, C)\to \Pi, with strict schema validation and trust-region projection around safe defaults. Downstream selection remains ToT-style with score S=μ+βσS=\mu+\beta\sigma and depth-annealed β\beta. We show NLEL strictly generalizes CoT/ToT, prove an anytime-monotonicity property for top-kk selection under label-conditioned bundles, and bound selector shortfall by control-vector distortion, providing decision-relevant justification for guards like trust regions and verification passes. We instantiate Ψ\Psi as a prompt-only JSON Parameter Emitter and preregister an evaluation on GSM8K, MATH (subset), StrategyQA, and ARC-Challenge with compute-aware reporting (success@compute, tokens-per-success) and ablations over Λ\Lambda, Ψ\Psi, trust-region radius, and control quantization; preregistered forecasts anticipate accuracy gains at comparable token budgets and improved success@compute under constraints. NLEL offers an interpretable, model-agnostic interface that separates intent from execution for controllable, auditable LM inference.

Keywords

Cite

@article{arxiv.2510.04817,
  title  = {Natural Language Edge Labelling: Decoupling Intent from Execution in Structured LM Reasoning},
  author = {Abhinav Madahar},
  journal= {arXiv preprint arXiv:2510.04817},
  year   = {2025}
}
R2 v1 2026-07-01T06:19:06.298Z