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Rademacher complexity bound for domain adaptation regression

机译:Rademacher复杂性绑定域适应回归

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Domain adaptation problems arise when the data distribution in test domain is different from that in training domain. In this paper, we provide a new error bound for the domain adaptive regression problem. Inspired by the original ideas in 0???1 classification, firstly, an error bound with a large amount of samples of source domain can be got in a new scene of regression. In the process, we utilize the covering number and Rademacher complexity respectively. Then we combine the error bound of source domain by Rademacher complexity with the divergence distance to get a new learning bound in regression. Using the thought and framework in classification to deal with error bound problems in regression is the key ideas, it opens the door to tackling domain adaptation tasks by making full use of the Rademacher complexity tools in the new scenario of regression.
机译:当测试域中的数据分布与训练域中的数据分布不同时出现域的适应问题。在本文中,我们为域自适应回归问题提供了一个新的错误。受到0 ??? 1分类的原始想法的启发,首先,通过源域的大量样本绑定的错误可以在回归的新场景中获得。在该过程中,我们分别利用覆盖数和Rademacher复杂性。然后,我们将Rademacher复杂性与发散距离相结合的源域的误差,以获得回归中的新学习。使用分类中的思想和框架来处理回归中的错误绑定问题是关键的想法,它通过在新的回归中充分利用RadeMacher复杂性工具来打开门来解决域适应任务。

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