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Partial domain adaptation based on shared class oriented adversarial network

机译:基于共享类面向对抗网络的部分域适应

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摘要

Most existing domain adaptation methods assume that the label space of the source domain is the same as the label space of the target domain. However, this assumption is generally untenable due to the differences between the two domains. Therefore, a novel domain adaptation paradigm called Partial Domain Adaptation (PDA), which only assumes that the source label space is large enough to subsume the target label space has been proposed recently to relax such strict assumption. Previous partial domain adaptation methods mainly utilize weighting mechanisms to alleviate negative transfer caused by outlier classes samples. Though these methods have achieved high performance in PDA tasks, all the heterogeneous data is retained during the whole training process, which still contributes to negative transfer. In this work, we propose a shared class oriented adversarial network (SCOAN) for partial domain adaptation. Outlier samples are excluded from training process via weighting strategy to entirely circumvent negative transfer and positive transfer is performed by combining adversarial network and Maximum Mean Discrepancy (MMD) to bridge domain gap. Multi-classifier module is proposed to further improve the generalization ability of the network. Extensive experiments show that SCOAN achieves state-of-the-art results on several benchmark partial domain adaptation datasets.
机译:大多数现有域适应方法假定源域的标签空间与目标域的标签空间相同。然而,由于两个域之间的差异,这种假设通常无法维持。因此,一种名为部分域适配(PDA)的新颖域适应范式,其仅假定源标签空间足够大以便最近提出了对目标标签空间已经提出放松这么严格的假设。以前的部分域适应方法主要利用加权机制来缓解由异常级别样本引起的负转移。虽然这些方法在PDA任务中实现了高性能,但在整个训练过程中保留所有异质数据,这仍然有助于负转移。在这项工作中,我们提出了一个共享的面向课程的对抗网络(SCOAN),用于部分域适应。通过加权策略从训练过程中排除了异常样本,以完全避免负转移,通过将对抗网络和最大平均差异(MMD)结合到桥接结构域间隙来进行阳性转移。建议多分类器模块进一步提高网络的泛化能力。广泛的实验表明,Scoan在若干基准部分域适应数据集上实现了最先进的结果。

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