多源域自适应的耦合训练

Ohad Amosy, Gal Chechik
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引用次数: 2

摘要

无监督域自适应通常通过学习源域的标记样本和目标域的未标记样本的联合表示来解决。不幸的是,由于负迁移,难以共享表示可能会损害自适应,在负迁移中,对源域有用的特征被学习,即使它们损害了对目标域的推断。在这里,我们提出了一种替代的软共享方案。我们为源数据和目标数据训练独立但弱耦合的模型,同时鼓励它们的预测一致。两种耦合模型的联合训练有效地利用了未标记目标数据上的分布,达到了较高的目标精度。具体来说,我们通过分析和经验证明了目标模型的决策边界收敛于目标分布的低密度“谷”。我们用四个多源域适应(MSDA)基准、数字、亚马逊文本评论、Office-Caltech和图像(DomainNet)来评估我们的方法。我们发现它始终优于当前的MSDA SoTA,有时甚至有很大的差距。
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Coupled Training for Multi-Source Domain Adaptation
Unsupervised domain adaptation is often addressed by learning a joint representation of labeled samples from a source domain and unlabeled samples from a target domain. Unfortunately, hard sharing of representation may hurt adaptation because of negative transfer, where features that are useful for source domains are learned even if they hurt inference on the target domain. Here, we propose an alternative, soft sharing scheme. We train separate but weakly-coupled models for the source and the target data, while encouraging their predictions to agree. Training the two coupled models jointly effectively exploits the distribution over unlabeled target data and achieves high accuracy on the target. Specifically, we show analytically and empirically that the decision boundaries of the target model converge to low-density "valleys" of the target distribution. We evaluate our approach on four multi-source domain adaptation (MSDA) benchmarks, digits, amazon text reviews, Office-Caltech and images (DomainNet). We find that it consistently outperforms current MSDA SoTA, sometimes by a very large margin.
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