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Main Authors: Wang, Jing, Bae, Wonho, Chen, Jiahong, Wang, Wenxu, Noh, Junhyug
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2510.00478
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author Wang, Jing
Bae, Wonho
Chen, Jiahong
Wang, Wenxu
Noh, Junhyug
author_facet Wang, Jing
Bae, Wonho
Chen, Jiahong
Wang, Wenxu
Noh, Junhyug
contents Recent work on latent diffusion models (LDMs) has focused almost exclusively on generative tasks, leaving their potential for discriminative transfer largely unexplored. We introduce Discriminative Vicinity Diffusion (DVD), a novel LDM-based framework for a more practical variant of source-free domain adaptation (SFDA): the source provider may share not only a pre-trained classifier but also an auxiliary latent diffusion module, trained once on the source data and never exposing raw source samples. DVD encodes each source feature's label information into its latent vicinity by fitting a Gaussian prior over its k-nearest neighbors and training the diffusion network to drift noisy samples back to label-consistent representations. During adaptation, we sample from each target feature's latent vicinity, apply the frozen diffusion module to generate source-like cues, and use a simple InfoNCE loss to align the target encoder to these cues, explicitly transferring decision boundaries without source access. Across standard SFDA benchmarks, DVD outperforms state-of-the-art methods. We further show that the same latent diffusion module enhances the source classifier's accuracy on in-domain data and boosts performance in supervised classification and domain generalization experiments. DVD thus reinterprets LDMs as practical, privacy-preserving bridges for explicit knowledge transfer, addressing a core challenge in source-free domain adaptation that prior methods have yet to solve.
format Preprint
id arxiv_https___arxiv_org_abs_2510_00478
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publishDate 2025
record_format arxiv
spellingShingle Vicinity-Guided Discriminative Latent Diffusion for Privacy-Preserving Domain Adaptation
Wang, Jing
Bae, Wonho
Chen, Jiahong
Wang, Wenxu
Noh, Junhyug
Machine Learning
Recent work on latent diffusion models (LDMs) has focused almost exclusively on generative tasks, leaving their potential for discriminative transfer largely unexplored. We introduce Discriminative Vicinity Diffusion (DVD), a novel LDM-based framework for a more practical variant of source-free domain adaptation (SFDA): the source provider may share not only a pre-trained classifier but also an auxiliary latent diffusion module, trained once on the source data and never exposing raw source samples. DVD encodes each source feature's label information into its latent vicinity by fitting a Gaussian prior over its k-nearest neighbors and training the diffusion network to drift noisy samples back to label-consistent representations. During adaptation, we sample from each target feature's latent vicinity, apply the frozen diffusion module to generate source-like cues, and use a simple InfoNCE loss to align the target encoder to these cues, explicitly transferring decision boundaries without source access. Across standard SFDA benchmarks, DVD outperforms state-of-the-art methods. We further show that the same latent diffusion module enhances the source classifier's accuracy on in-domain data and boosts performance in supervised classification and domain generalization experiments. DVD thus reinterprets LDMs as practical, privacy-preserving bridges for explicit knowledge transfer, addressing a core challenge in source-free domain adaptation that prior methods have yet to solve.
title Vicinity-Guided Discriminative Latent Diffusion for Privacy-Preserving Domain Adaptation
topic Machine Learning
url https://arxiv.org/abs/2510.00478