DreamReader: An Interpretability Toolkit for Text-to-Image Models
arXiv cs.LG / 3/17/2026
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Key Points
- DreamReader provides a unified, model-agnostic framework for diffusion interpretability across timesteps and modules, consolidating existing probing methods.
- It introduces three novel intervention primitives: representation fine-tuning (LoReFT) for subspace-constrained internal adaptation, classifier-guided gradient steering with MLP probes, and component-level cross-model mapping to study transferability of representations.
- The toolkit enables lightweight white-box interventions on text-to-image models by leveraging techniques from LLM interpretability, including activation stitching and targeted activation steering.
- DreamReader is released as an open-source toolkit to advance research on diffusion model interpretability and cross-model analysis.
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