English

ROI-Reasoning: Rational Optimization for Inference via Pre-Computation Meta-Cognition

Artificial Intelligence 2026-01-08 v1

Abstract

Large language models (LLMs) can achieve strong reasoning performance with sufficient computation, but they do not inherently know how much computation a task requires. We study budgeted inference-time reasoning for multiple tasks under a strict global token constraint and formalize it as a Ordered Stochastic Multiple-Choice Knapsack Problem(OS-MCKP). This perspective highlights a meta-cognitive requirement -- anticipating task difficulty, estimating return over investment (ROI), and allocating computation strategically. We propose ROI-Reasoning, a two-stage framework that endows LLMs with intrinsic, budget-aware rationality. In the first stage, Meta-Cognitive Fine-Tuning teaches models to predict reasoning cost and expected utility before generation, enabling explicit solve-or-skip decisions. Next, Rationality-Aware Reinforcement Learning optimizes sequential decision making under a hard token budget, allowing models to learn long-horizon allocation strategies. Across budgeted mathematical reasoning benchmarks, ROI-Reasoning consistently improves overall score while substantially reducing regret under tight computation budgets.

Keywords

Cite

@article{arxiv.2601.03822,
  title  = {ROI-Reasoning: Rational Optimization for Inference via Pre-Computation Meta-Cognition},
  author = {Muyang Zhao and Qi Qi and Hao Sun},
  journal= {arXiv preprint arXiv:2601.03822},
  year   = {2026}
}
R2 v1 2026-07-01T08:54:10.090Z