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Optimal Transport for Multi-source Domain Adaptation under Target Shift

机译:目标转移下多源域自适应的最优传输

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In this paper, we tackle the problem of reducing discrepancies between multiple domains, i.e. multi-source domain adaptation, and consider it under the target shift assumption: in all domains we aim to solve a classification problem with the same output classes, but with different labels proportions. This problem, generally ignored in the vast majority of domain adaptation papers, is nevertheless critical in real-world applications, and we theoretically show its impact on the success of the adaptation. Our proposed method is based on optimal transport, a theory that has been successfully used to tackle adaptation problems in machine learning. The introduced approach, Joint Class Proportion and Optimal Transport (JCPOT), performs multi-source adaptation and target shift correction simultaneously by learning the class probabilities of the unlabeled target sample and the coupling allowing to align two (or more) probability distributions. Experiments on both synthetic and real-world data (satellite image pixel classification) task show the superiority of the proposed method over the state-of-the-art.
机译:在本文中,我们解决了减少多个域之间的差异(即多源域自适应)的问题,并在目标偏移假设下进行了考虑:在所有域中,我们旨在解决具有相同输出类别但具有不同输出类别的分类问题标签比例。这个问题在绝大多数领域适应论文中通常都被忽略,但是在实际应用中却是至关重要的,并且我们从理论上证明了它对适应成功的影响。我们提出的方法基于最佳运输,该理论已成功用于解决机器学习中的适应问题。引入的方法“联合类别比例和最佳运输”(JCPOT)通过学习未标记目标样本的类别概率和耦合来同时对齐两个(或多个)概率分布,从而同时执行多源自适应和目标偏移校正。在合成数据和实际数据(卫星图像像素分类)任务上的实验表明,该方法优于最新技术。

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