2021
DOI: 10.48550/arxiv.2108.03531
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Learning to Transfer with von Neumann Conditional Divergence

Abstract: The similarity of feature representations plays a pivotal role in the success of domain adaptation and generalization. Feature similarity includes both the invariance of marginal distributions and the closeness of conditional distributions given the desired response y (e.g., class labels). Unfortunately, traditional methods always learn such features without fully taking into consideration the information in y, which in turn may lead to a mismatch of the conditional distributions or the mix-up of discriminativ… Show more

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