Beyond Masks: Efficient, Flexible Diffusion Language Models via Deletion-Insertion Processes
Abstract
While Masked Diffusion Language Models (MDLMs) relying on token masking and unmasking have shown promise in language modeling, their computational efficiency and generation flexibility remain constrained by the masking paradigm. In this paper, we propose Deletion-Insertion Diffusion language models (DID) that rigorously formulate token deletion and insertion as discrete diffusion processes, replacing the masking and unmasking processes in current MDLMs. DID improves training and inference efficiency by eliminating two major sources of computational overhead in MDLMs: the computations on non-informative 1) $\texttt{\<MASK\>}$ tokens inherent to its paradigm, and 2) $\texttt{\<PAD\>}$ tokens introduced in variable-length settings. Furthermore, DID offers greater flexibility by: 1) natively supporting variable-length sequences without requiring fixed-length padding, and 2) an intrinsic self-correction mechanism during generation due to insertion that dynamically adjusts token positions. To train DID, we design a score-based approach that assigns scores to token insertion operations and derive appropriate training objectives. The objectives involve subsequence counting problems, which we efficiently solve via a parallelized dynamic programming algorithm. Our experiments across fixed and variable-length settings demonstrate the advantage of DID over baselines of MDLMs and existing insertion-based LMs, in terms of modeling performance, sampling quality, and training/inference speed, without any hyperparameter tuning. Code: https://github.com/FMD-NEXT/DID
Cite
Text
Ding et al. "Beyond Masks: Efficient, Flexible Diffusion Language Models via Deletion-Insertion Processes." International Conference on Learning Representations, 2026.Markdown
[Ding et al. "Beyond Masks: Efficient, Flexible Diffusion Language Models via Deletion-Insertion Processes." International Conference on Learning Representations, 2026.](https://mlanthology.org/iclr/2026/ding2026iclr-beyond/)BibTeX
@inproceedings{ding2026iclr-beyond,
title = {{Beyond Masks: Efficient, Flexible Diffusion Language Models via Deletion-Insertion Processes}},
author = {Ding, Fangyu and Ding, Ding and Chen, Sijin and Wang, Kaibo and Xu, Peng and Feng, Zijin and Bai, Haoli and Han, Kai and Yan, Youliang and Yuan, Binhang and Sun, Jiacheng},
booktitle = {International Conference on Learning Representations},
year = {2026},
url = {https://mlanthology.org/iclr/2026/ding2026iclr-beyond/}
}