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Diffusion Soup: Model Merging for Text-to-Image Diffusion Models

12 June 2024
Benjamin Biggs
Arjun Seshadri
Yang Zou
Achin Jain
Aditya Golatkar
Yusheng Xie
Alessandro Achille
Ashwin Swaminathan
Stefano Soatto
    MoMe
    DiffM
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Abstract

We present Diffusion Soup, a compartmentalization method for Text-to-Image Generation that averages the weights of diffusion models trained on sharded data. By construction, our approach enables training-free continual learning and unlearning with no additional memory or inference costs, since models corresponding to data shards can be added or removed by re-averaging. We show that Diffusion Soup samples from a point in weight space that approximates the geometric mean of the distributions of constituent datasets, which offers anti-memorization guarantees and enables zero-shot style mixing. Empirically, Diffusion Soup outperforms a paragon model trained on the union of all data shards and achieves a 30% improvement in Image Reward (.34 →\to→ .44) on domain sharded data, and a 59% improvement in IR (.37 →\to→ .59) on aesthetic data. In both cases, souping also prevails in TIFA score (respectively, 85.5 →\to→ 86.5 and 85.6 →\to→ 86.8). We demonstrate robust unlearning -- removing any individual domain shard only lowers performance by 1% in IR (.45 →\to→ .44) -- and validate our theoretical insights on anti-memorization using real data. Finally, we showcase Diffusion Soup's ability to blend the distinct styles of models finetuned on different shards, resulting in the zero-shot generation of hybrid styles.

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