CLJul 24, 2025

Wide-In, Narrow-Out: Revokable Decoding for Efficient and Effective DLLMs

Apple
arXiv:2507.18578v232 citationsh-index: 21Has Code
Originality Highly original
AI Analysis

This addresses a critical bottleneck for efficient inference in DLLMs, offering a significant improvement over existing methods.

The paper tackles the quality-speed trade-off in Diffusion Large Language Models (DLLMs) by introducing WINO, a training-free decoding algorithm that enables revokable decoding, resulting in up to 10x speedup with improved accuracy on benchmarks like GSM8K and Flickr30K.

Diffusion Large Language Models (DLLMs) have emerged as a compelling alternative to Autoregressive models, designed for fast parallel generation. However, existing DLLMs are plagued by a severe quality-speed trade-off, where faster parallel decoding leads to significant performance degradation. We attribute this to the irreversibility of standard decoding in DLLMs, which is easily polarized into the wrong decoding direction along with early error context accumulation. To resolve this, we introduce Wide-In, Narrow-Out (WINO), a training-free decoding algorithm that enables revokable decoding in DLLMs. WINO employs a parallel draft-and-verify mechanism, aggressively drafting multiple tokens while simultaneously using the model's bidirectional context to verify and re-mask suspicious ones for refinement. Verified in open-source DLLMs like LLaDA and MMaDA, WINO is shown to decisively improve the quality-speed trade-off. For instance, on the GSM8K math benchmark, it accelerates inference by 6$\times$ while improving accuracy by 2.58%; on Flickr30K captioning, it achieves a 10$\times$ speedup with higher performance. More comprehensive experiments are conducted to demonstrate the superiority and provide an in-depth understanding of WINO.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes