LGCVGRNEJun 7, 2021

GAN Cocktail: mixing GANs without dataset access

arXiv:2106.03847v214 citations
Originality Incremental advance
AI Analysis

This addresses the need for combining specialized generative models in real-world scenarios where data access is limited, though it is incremental as it builds on existing model merging concepts.

The paper tackles the problem of merging pretrained generative models without access to original training data or increasing network size, achieving superior performance over baseline methods and existing transfer learning techniques.

Today's generative models are capable of synthesizing high-fidelity images, but each model specializes on a specific target domain. This raises the need for model merging: combining two or more pretrained generative models into a single unified one. In this work we tackle the problem of model merging, given two constraints that often come up in the real world: (1) no access to the original training data, and (2) without increasing the size of the neural network. To the best of our knowledge, model merging under these constraints has not been studied thus far. We propose a novel, two-stage solution. In the first stage, we transform the weights of all the models to the same parameter space by a technique we term model rooting. In the second stage, we merge the rooted models by averaging their weights and fine-tuning them for each specific domain, using only data generated by the original trained models. We demonstrate that our approach is superior to baseline methods and to existing transfer learning techniques, and investigate several applications.

Code Implementations1 repo
Foundations

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

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