Semiparametric Testing With Highly Persistent Predictors

B. Werker, Bo Zhou
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引用次数: 4

Abstract

We address the issue of semiparametric efficiency in the bivariate regression problem with a highly persistent predictor, where the joint distribution of the innovations is regarded an infinite-dimensional nuisance parameter. Using a structural representation of the limit experiment and exploiting invariance relationships therein, we construct invariant point-optimal tests for the regression coefficient of interest. This approach naturally leads to a family of feasible tests based on the component-wise ranks of the innovations that can gain considerable power relative to existing tests under non-Gaussian innovation distributions, while behaving equivalently under Gaussianity. When an i.i.d.\ assumption on the innovations is appropriate for the data at hand, our tests exploit the efficiency gains possible. Moreover, we show by simulation that our test remains well behaved under some forms of conditional heteroskedasticity.
具有高度持续性预测因子的半参数检验
我们用高度持久的预测器解决双变量回归问题中的半参数效率问题,其中创新的联合分布被认为是一个无限维的讨厌参数。利用极限实验的结构表示,利用其中的不变性关系,构造了感兴趣回归系数的不变性点最优检验。这种方法自然会产生一系列可行的测试,这些测试基于创新的组件级别,相对于非高斯创新分布下的现有测试,这些测试可以获得相当大的能力,同时在高斯分布下表现相同。当对创新的i.i.d \假设适合手头的数据时,我们的测试将利用可能的效率增益。此外,我们通过模拟表明,我们的测试在某些形式的条件异方差下仍然表现良好。
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