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Connecting the Dots with Landmarks: Discriminatively Learning Domain-Invariant Features for Unsupervised Domain Adaptation

机译:使用地标连接点:识别无监督域适应的域名功能

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Learning domain-invariant features is of vital importance to unsupervised domain adaptation, where classifiers trained on the source domain need to be adapted to a different target domain for which no labeled examples are available. In this paper, we propose a novel approach for learning such features. The central idea is to exploit the existence of landmarks, which are a subset of labeled data instances in the source domain that are distributed most similarly to the target domain. Our approach automatically discovers the landmarks and use them to bridge the source to the target by constructing provably easier auxiliary domain adaptation tasks. The solutions of those auxiliary tasks form the basis to compose invariant features for the original task. We show how this composition can be optimized discriminatively without requiring labels from the target domain. We validate the method on standard benchmark datasets for visual object recognition and sentiment analysis of text. Empirical results show the proposed method outperforms the state-of-the-art significantly.
机译:学习域 - 不变的功能对无监督域适应至关重要,其中源域上训练的分类器需要适应于未使用标记示例的不同目标域。在本文中,我们提出了一种学习此类特征的新方法。中央观点是利用地标存在,它们是源域中的标记数据实例的子集,其分发到目标域。我们的方法通过构造可提供更简单的辅助域适应任务来自动发现地标并使用它们来向目标桥接到目标。这些辅助任务的解决方案构成了构成原始任务的不变功能的基础。我们展示了如何判别优化该组合物,而不需要来自目标域的标签。我们验证了标准基准数据集的方法,用于视觉对象识别和文本的情感分析。经验结果表明,所提出的方法显着优于最先进的。

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