4.7 Article

Auxiliary task guided mean and covariance alignment network for adversarial domain adaptation

Journal

KNOWLEDGE-BASED SYSTEMS
Volume 223, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.knosys.2021.107066

Keywords

Adversarial domain adaptation; Wasserstein distance; Clustering; Divergence metric

Funding

  1. National Natural Science Foundation of China [61976206, 61832017]
  2. Beijing Outstanding Young Scientist Program (China) [BJJWZYJH012019100020098]
  3. CCF-Tencent Open Fund (China) [RAGR20200110]
  4. Fundamental Research Funds for the Central Universities, China
  5. Natural Science Foundation of China [61802380, 61802016]
  6. Priority Research Program of the Chinese Academy of Sciences (China) [XDA19020500]
  7. Research Funds of Renmin University of China [21XNLG05]

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This paper proposes a novel method called AT-MCAN for unsupervised domain adaptation, which introduces a covariance-aware divergence metric and an auxiliary clustering task to enhance the discriminability of features, allowing the classifier to utilize data from both domains effectively.
Adversarial domain adaptation (ADA) learns representations with strong transferability by eliminating the discrepancy between the probability distributions of the source and the target domains. Conventional ADA methods usually employ the Wasserstein distance as a discrepancy measure and train the classifier only from the source domain data. We show that such methods actually only consider first-order statistics in the latent feature space and the discriminability of the learned representations is not fully explored. In this paper, we propose a novel method called auxiliary task guided mean and covariance alignment network (AT-MCAN) for unsupervised domain adaptation. To take the second order statistics differences into consideration, AT-MCAN introduces a covariance-aware divergence metric to align the distributions of two domains. To enhance the discriminability of the features, ATMCAN introduces an auxiliary clustering task to the target domain so that the classifier can employ the data from both domains. We provide both theoretical analysis on the generalization bound and empirical evaluations on standard benchmarks to show the effectiveness of our proposed AT-MCAN. (C) 2021 Elsevier B.V. All rights reserved.

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