Section 01
【Introduction】MARS: Margin-Adversarial Risk-Controlled Early Stopping Strategy, Saving 25-47% Computation Tokens Without Accuracy Loss
MARS (Margin-Adversarial Risk-controlled Stopping) is a research result published on arXiv on June 11, 2026. Addressing the computational overhead issue in parallel inference-time expansion, it monitors the aggregated voting dynamics at intermediate checkpoints to predict reasoning trajectories that might change the answer. By adopting a margin-adversarial stopping rule, it saves 25-47% of computation tokens while ensuring accuracy. The core is to separate two types of uncertainties: trajectory-level switching probability and adversarial boundary, enabling risk-controlled early stopping.