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A significance test for covariates in nonparametric regression

机译:非参数回归中协变量的显着性检验

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We consider testing the significance of a subset of covariates in a nonparametric regression. These covariates can be continuous and/or discrete. We propose a new kernel-based test that smoothes only over the covariates appearing under the null hypothesis, so that the curse of dimensionality is mitigated. The test statistic is asymptotically pivotal and the rate of which the test detects local alternatives depends only on the dimension of the covariates under the null hypothesis. We show the validity of wild bootstrap for the test. In small samples, our test is competitive compared to existing procedures.
机译:我们考虑在非参数回归中测试协变量子集的显着性。这些协变量可以是连续的和/或离散的。我们提出了一种新的基于核的检验,该检验仅对零假设下出现的协变量进行平滑处理,从而减轻了维数的诅咒。检验统计量是渐近关键的,检验检测局部替代方案的比率仅取决于零假设下协变量的维数。我们证明了该测试的有效性。在小样本中,我们的测试与现有程序相比具有竞争力。

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