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Autores principales: Song, Junha, Kim, Tae Soo, Kim, Junha, Nam, Gunhee, Kooi, Thijs, Choo, Jaegul
Formato: Preprint
Publicado: 2024
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Acceso en línea:https://arxiv.org/abs/2407.15383
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author Song, Junha
Kim, Tae Soo
Kim, Junha
Nam, Gunhee
Kooi, Thijs
Choo, Jaegul
author_facet Song, Junha
Kim, Tae Soo
Kim, Junha
Nam, Gunhee
Kooi, Thijs
Choo, Jaegul
contents This paper aims to adapt the source model to the target environment, leveraging small user feedback (i.e., labeled target data) readily available in real-world applications. We find that existing semi-supervised domain adaptation (SemiSDA) methods often suffer from poorly improved adaptation performance when directly utilizing such feedback data, as shown in Figure 1. We analyze this phenomenon via a novel concept called Negatively Biased Feedback (NBF), which stems from the observation that user feedback is more likely for data points where the model produces incorrect predictions. To leverage this feedback while avoiding the issue, we propose a scalable adapting approach, Retrieval Latent Defending. This approach helps existing SemiSDA methods to adapt the model with a balanced supervised signal by utilizing latent defending samples throughout the adaptation process. We demonstrate the problem caused by NBF and the efficacy of our approach across various benchmarks, including image classification, semantic segmentation, and a real-world medical imaging application. Our extensive experiments reveal that integrating our approach with multiple state-of-the-art SemiSDA methods leads to significant performance improvements.
format Preprint
id arxiv_https___arxiv_org_abs_2407_15383
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Is user feedback always informative? Retrieval Latent Defending for Semi-Supervised Domain Adaptation without Source Data
Song, Junha
Kim, Tae Soo
Kim, Junha
Nam, Gunhee
Kooi, Thijs
Choo, Jaegul
Computer Vision and Pattern Recognition
This paper aims to adapt the source model to the target environment, leveraging small user feedback (i.e., labeled target data) readily available in real-world applications. We find that existing semi-supervised domain adaptation (SemiSDA) methods often suffer from poorly improved adaptation performance when directly utilizing such feedback data, as shown in Figure 1. We analyze this phenomenon via a novel concept called Negatively Biased Feedback (NBF), which stems from the observation that user feedback is more likely for data points where the model produces incorrect predictions. To leverage this feedback while avoiding the issue, we propose a scalable adapting approach, Retrieval Latent Defending. This approach helps existing SemiSDA methods to adapt the model with a balanced supervised signal by utilizing latent defending samples throughout the adaptation process. We demonstrate the problem caused by NBF and the efficacy of our approach across various benchmarks, including image classification, semantic segmentation, and a real-world medical imaging application. Our extensive experiments reveal that integrating our approach with multiple state-of-the-art SemiSDA methods leads to significant performance improvements.
title Is user feedback always informative? Retrieval Latent Defending for Semi-Supervised Domain Adaptation without Source Data
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2407.15383