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Main Authors: Song, Jingwei, Wang, Xinyu, Wang, Hanbin, Lei, Xiaoxuan, Shi, Bill, Han, Shixin, Yang, Eric, Chang, Xiao-Wen, Ai, Lynn
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2601.15498
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author Song, Jingwei
Wang, Xinyu
Wang, Hanbin
Lei, Xiaoxuan
Shi, Bill
Han, Shixin
Yang, Eric
Chang, Xiao-Wen
Ai, Lynn
author_facet Song, Jingwei
Wang, Xinyu
Wang, Hanbin
Lei, Xiaoxuan
Shi, Bill
Han, Shixin
Yang, Eric
Chang, Xiao-Wen
Ai, Lynn
contents Speculative Decoding (SD) accelerates autoregressive large language model (LLM) inference by decoupling generation and verification. While recent methods improve draft quality by tightly coupling the drafter with the target model, the verification mechanism itself remains largely unchanged, relying on strict token-level rejection sampling. In practice, modern LLMs frequently operate in low-margin regimes where the target model exhibits weak preference among top candidates. In such cases, rejecting plausible runner-up tokens yields negligible information gain while incurring substantial rollback cost, leading to a fundamental inefficiency in verification. We propose Margin-Aware Speculative Verification, a training-free and domain-agnostic verification strategy that adapts to the target model's local decisiveness. Our method conditions verification on decision stability measured directly from the target logits and relaxes rejection only when strict verification provides minimal benefit. Importantly, the approach modifies only the verification rule and is fully compatible with existing target-coupled speculative decoding frameworks. Extensive experiments across model scales ranging from 8B to 235B demonstrate that our method delivers consistent and significant inference speedups over state-of-the-art baselines while preserving generation quality across diverse benchmarks. The code is available at https://github.com/5SSjw/MARS.
format Preprint
id arxiv_https___arxiv_org_abs_2601_15498
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle MARS: Unleashing the Power of Speculative Decoding via Margin-Aware Verification
Song, Jingwei
Wang, Xinyu
Wang, Hanbin
Lei, Xiaoxuan
Shi, Bill
Han, Shixin
Yang, Eric
Chang, Xiao-Wen
Ai, Lynn
Machine Learning
Speculative Decoding (SD) accelerates autoregressive large language model (LLM) inference by decoupling generation and verification. While recent methods improve draft quality by tightly coupling the drafter with the target model, the verification mechanism itself remains largely unchanged, relying on strict token-level rejection sampling. In practice, modern LLMs frequently operate in low-margin regimes where the target model exhibits weak preference among top candidates. In such cases, rejecting plausible runner-up tokens yields negligible information gain while incurring substantial rollback cost, leading to a fundamental inefficiency in verification. We propose Margin-Aware Speculative Verification, a training-free and domain-agnostic verification strategy that adapts to the target model's local decisiveness. Our method conditions verification on decision stability measured directly from the target logits and relaxes rejection only when strict verification provides minimal benefit. Importantly, the approach modifies only the verification rule and is fully compatible with existing target-coupled speculative decoding frameworks. Extensive experiments across model scales ranging from 8B to 235B demonstrate that our method delivers consistent and significant inference speedups over state-of-the-art baselines while preserving generation quality across diverse benchmarks. The code is available at https://github.com/5SSjw/MARS.
title MARS: Unleashing the Power of Speculative Decoding via Margin-Aware Verification
topic Machine Learning
url https://arxiv.org/abs/2601.15498