English

Attention Sinks in Diffusion Transformers: A Causal Analysis

Computer Vision and Pattern Recognition 2026-05-13 v2

Abstract

Attention sinks -- tokens that receive disproportionate attention mass -- are assumed to be functionally important in autoregressive language models, but their role in diffusion transformers remains unclear. We present a causal analysis in text-to-image diffusion, dynamically identifying dominant attention recipients per timestep and suppressing them via paired, training-free interventions on the score and value paths. Across 553 GenEval prompts on Stable Diffusion~3 (with SDXL corroboration), removing these sinks does not degrade text-image alignment (CLIP-T) or preference proxies (ImageReward, HPS-v2) at k=1k{=}1; only under stronger interventions (k ⁣ ⁣10k\!\geq\!10) does HPS-v2 exhibit a metric-dependent boundary, while CLIP-T remains robust throughout. The perceptual shifts induced by suppression are nonetheless \emph{sink-specific} --  ⁣6×\sim\!6\times larger than equal-budget random masking -- revealing an empirical dissociation between trajectory-level perturbation and \emph{semantic alignment} in diffusion transformers. \footnote{Code available at https://github.com/wfz666/ICML26-attention-sink.}

Keywords

Cite

@article{arxiv.2605.09313,
  title  = {Attention Sinks in Diffusion Transformers: A Causal Analysis},
  author = {Fangzheng Wu and Brian Summa},
  journal= {arXiv preprint arXiv:2605.09313},
  year   = {2026}
}
R2 v1 2026-07-01T13:01:12.252Z