论文标题

自适应重新加权对抗领域适应

Self-adaptive Re-weighted Adversarial Domain Adaptation

论文作者

Wang, Shanshan, Zhang, Lei

论文摘要

现有的对抗域适应方法主要考虑边际分布,这些方法可能导致转移或负转移。为了解决这个问题,我们提出了一种自适应重新加权的对抗领域适应方法,该方法试图从条件分布的角度增强域的对齐。为了促进正转移和对抗负面转移,我们减少了对齐特征的对抗损失的重量,同时增加了通过条件熵测量的不良对准的对抗力。此外,在混乱的域上采用了利用源样本和伪标记的目标样品的三重损失。这样的度量损失可确保比级间对更接近级别的样本对的距离,以实现级别的比对。这样,可以在共同训练过程中同时捕获高精确的伪标记的目标样品和语义比对。我们的方法达到了理想源和目标假设的低关节误差。然后,在Ben-David的定理之后,可以将预期的目标误差在上限。经验证据表明,所提出的模型在标准域适应数据集上优于艺术状态。

Existing adversarial domain adaptation methods mainly consider the marginal distribution and these methods may lead to either under transfer or negative transfer. To address this problem, we present a self-adaptive re-weighted adversarial domain adaptation approach, which tries to enhance domain alignment from the perspective of conditional distribution. In order to promote positive transfer and combat negative transfer, we reduce the weight of the adversarial loss for aligned features while increasing the adversarial force for those poorly aligned measured by the conditional entropy. Additionally, triplet loss leveraging source samples and pseudo-labeled target samples is employed on the confusing domain. Such metric loss ensures the distance of the intra-class sample pairs closer than the inter-class pairs to achieve the class-level alignment. In this way, the high accurate pseudolabeled target samples and semantic alignment can be captured simultaneously in the co-training process. Our method achieved low joint error of the ideal source and target hypothesis. The expected target error can then be upper bounded following Ben-David's theorem. Empirical evidence demonstrates that the proposed model outperforms state of the arts on standard domain adaptation datasets.

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