领域自适应分类

Fatemeh Mirrashed, Mohammad Rastegari
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引用次数: 18

摘要

提出了一种利用二元属性在不同领域间利用类别的内在紧密结构的无监督领域自适应方法。我们的方法直接对目标域的分类进行优化。关键的洞察力是找到跨类别和跨领域可预测的属性。我们实现的性能大大超过了标准基准的最先进的结果。事实上,在许多情况下,我们的方法在无监督域自适应场景中达到了同域性能的上限。
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Domain Adaptive Classification
We propose an unsupervised domain adaptation method that exploits intrinsic compact structures of categories across different domains using binary attributes. Our method directly optimizes for classification in the target domain. The key insight is finding attributes that are discriminative across categories and predictable across domains. We achieve a performance that significantly exceeds the state-of-the-art results on standard benchmarks. In fact, in many cases, our method reaches the same-domain performance, the upper bound, in unsupervised domain adaptation scenarios.
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