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Semi-supervised learning of class balance under class-prior change by distribution matching

机译:班级匹配变化下班级平衡下班级平衡的半监督学习

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摘要

In real-world classification problems, the class balance in the training dataset does not necessarily reflect that of the test dataset, which can cause significant estimation bias. If the class ratio of the test dataset is known, instance re-weighting or resampling allows systematical bias correction. However, learning the class ratio of the test dataset is challenging when no labeled data is available from the test domain. In this paper, we propose to estimate the class ratio in the test dataset by matching probability distributions of training and test input data. We demonstrate the utility of the proposed approach through experiments.
机译:在实际的分类问题中,训练数据集中的类平衡不一定反映测试数据集中的类平衡,这可能会导致明显的估计偏差。如果测试数据集的类别比率已知,则实例重新加权或重采样可以系统地进行偏差校正。但是,当测试域中没有可用的标记数据时,学习测试数据集的分类比率是一项挑战。在本文中,我们建议通过匹配训练和测试输入数据的概率分布来估计测试数据集中的类比率。我们通过实验证明了该方法的实用性。

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