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Incorporating Pre-Training Data Matters in Unsupervised Domain Adaptation.

Yinsong Xu, Aidong Men, Yang Liu

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    This study reveals pre-training impacts unsupervised domain adaptation (UDA) by causing knowledge degradation and affecting error bounds. A new TriDA framework incorporates pre-training data to maintain knowledge and improve adaptation performance.

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    Area of Science:

    • Deep Learning
    • Computer Vision
    • Machine Learning

    Background:

    • Pre-trained models are standard in deep learning for downstream tasks.
    • Unsupervised domain adaptation (UDA) often uses ImageNet pre-trained backbones, focusing on source-target domain discrepancy.
    • The influence of pre-training on UDA effectiveness is under-explored.

    Purpose of the Study:

    • Investigate the impact of pre-training on unsupervised domain adaptation (UDA).
    • Analyze how pre-training affects model performance and error bounds in UDA.
    • Propose a novel framework to leverage pre-training data for improved UDA.

    Main Methods:

    • Analyzed dynamic distribution discrepancies between pre-training, source, and target domains.
    • Identified pre-trained knowledge degradation and gradient differences as sources of target error.
    • Proposed TriDA, a framework treating UDA as a three-domain problem (source, target, pre-training).
    • Developed pre-training data selection and synthesis strategies for efficiency and availability.

    Main Results:

    • Demonstrated that pre-training significantly impacts UDA performance.
    • Showed that target error arises from degenerative pre-trained knowledge and theoretical error bounds.
    • TriDA effectively maintains pre-trained knowledge and improves error bounds by incorporating pre-training data.
    • Achieved state-of-the-art performance on multiple benchmarks in both vanilla and source-free UDA.

    Conclusions:

    • Pre-training is a critical factor influencing UDA, not just a initialization step.
    • The TriDA framework offers a novel approach to enhance UDA by explicitly considering the pre-training domain.
    • The findings provide new insights into understanding and applying domain adaptation techniques.