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Striking a Balance in Unsupervised Fine-Grained Domain Adaptation Using Adversarial Learning

机译:使用对抗性学习在无监督的细粒度域自适应中取得平衡

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Fine-grained domain adaptation is an emerging yet very challenging task in representation learning. In this paper, we analyze a possible reason for the poor performance in fine-grained domain adaptation, which is the difficulty in striking a balance between distribution alignment and fine-grained variations elimination. Furthermore, we propose an adversarial fine-grained domain adaptation framework as a step towards alleviating the underlying conflict between fine-grained variations elimination and domain adaptation. Specifically, our adversarial framework consists of two key modules: a joint label predictor for conditional distribution alignment and a rectifier for fine-grained variations elimination. The key balance can be achieved through the adversarial learning. Besides, experiments on domain adaptation benchmark and fine-grained dataset validate the effectiveness of our framework and show that our framework consistently outperforms the state-of-the-art methods including RTN, MADA, Multi-Task, and DASA.
机译:在表示学习中,细粒度的域自适应是一项新兴但非常具有挑战性的任务。在本文中,我们分析了细粒度域自适应性能不佳的可能原因,即难以在分布对齐和消除细粒度变化之间取得平衡。此外,我们提出了一个对抗性的细粒度域自适应框架,作为缓解细粒度变异消除和域自适应之间潜在冲突的一步。具体来说,我们的对抗框架包括两个关键模块:用于条件分布对齐的联合标签预测器和用于消除细粒度变化的整流器。关键的平衡可以通过对抗学习来实现。此外,有关领域适应性基准测试和细粒度数据集的实验验证了我们框架的有效性,并表明我们的框架始终优于包括RTN,MADA,Multi-Task和DASA在内的最新方法。

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