回归模型检验的自适应混合方法

Adaptive-to-Model Hybrid of Tests for Regressions

Journal of the American Statistical Association · 2021
被引 5
ABS 4

中文导读

提出一种自适应混合检验方法,结合非参数估计检验和基于经验过程的检验的优点,避免各自缺陷,适用于回归模型检验,并通过数值研究验证其有效性。

Abstract

In model checking for regressions, nonparametric estimation-based tests usually have tractable limiting null distributions and are sensitive to oscillating alternative models, but suffer from the curse of dimensionality. In contrast, empirical process-based tests can, at the fastest possible rate, detect local alternatives distinct from the null model, yet are less sensitive to oscillating alternatives and rely on Monte Carlo approximation for critical value determination, which is costly in computation. We propose an adaptive-to-model hybrid of moment and conditional moment-based tests to fully inherit the merits of these two types of tests and avoid the shortcomings. Further, such a hybrid makes nonparametric estimation-based tests, under the alternatives, also share the merits of existing empirical process-based tests. The methodology can be readily applied to other kinds of data and construction of other hybrids. As a by-product in sufficient dimension reduction field, a study on residual-related central mean subspace and central subspace for model adaptation is devoted to showing when alternative models can be indicated and when cannot. Numerical studies are conducted to verify the powerfulness of the proposed test.

计量经济学非参数统计假设检验降维