Label Alignment Regularization for Distribution Shift
Recent work has highlighted the label alignment property (LAP) in supervised learning, where the vector of all labels in the dataset is mostly in the span of the top few singular vectors of the data matrix. Drawing inspiration from this observation, we propose a regularization method for unsupervise...
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Zusammenfassung: | Recent work has highlighted the label alignment property (LAP) in supervised
learning, where the vector of all labels in the dataset is mostly in the span
of the top few singular vectors of the data matrix. Drawing inspiration from
this observation, we propose a regularization method for unsupervised domain
adaptation that encourages alignment between the predictions in the target
domain and its top singular vectors. Unlike conventional domain adaptation
approaches that focus on regularizing representations, we instead regularize
the classifier to align with the unsupervised target data, guided by the LAP in
both the source and target domains. Theoretical analysis demonstrates that,
under certain assumptions, our solution resides within the span of the top
right singular vectors of the target domain data and aligns with the optimal
solution. By removing the reliance on the commonly used optimal joint risk
assumption found in classic domain adaptation theory, we showcase the
effectiveness of our method on addressing problems where traditional domain
adaptation methods often fall short due to high joint error. Additionally, we
report improved performance over domain adaptation baselines in well-known
tasks such as MNIST-USPS domain adaptation and cross-lingual sentiment
analysis. |
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DOI: | 10.48550/arxiv.2211.14960 |