We consider the problem of testing for long-range dependence in time-varying coefficient regression models, where the covariates and errors are locally stationary, allowing complex temporal dynamics and heteroscedasticity. We develop KPSS, R/S, V/S, and K/S-type statistics based on the nonparametric residuals. Under the null hypothesis, the local alternatives as well as the fixed alternatives, we derive the limiting distributions of the test statistics. As the four types of test statistics could degenerate when the time-varying mean, variance, long-run variance of errors, covariates, and the intercept lie in certain hyperplanes, we show the bootstrap-assisted tests are consistent under both degenerate and non-degenerate scenarios. In particular, in the presence of covariates the exact local asymptotic power of the bootstrap-assisted tests can enjoy the same order as that of the classical KPSS test of long memory for strictly stationary series. The asymptotic theory is built on a new Gaussian approximation technique for locally stationary long-memory processes with short-memory covariates, which is of independent interest. The effectiveness of our tests is demonstrated by extensive simulation studies and real data analysis.
翻译:我们考虑了在时间变化系数回归模型中长期依赖性测试的问题,在这种模型中,共差和误差是当地固定的,允许复杂的时间动态和异变性。我们根据非参数残留量开发了KPSS、R/S、V/S和K/S类统计。在无效假设下,当地替代品以及固定替代物的分布有限。在时间变化平均值、差异、长期误差差异、共差和截取存在于某些超高空时差时,四种类型的测试统计数据可能会退化。我们显示,靴杆辅助测试在退化和非降解情景下都是一致的。特别是,在存在共差异的情况下,靴杆辅助测试的精确局部无源能力可以享有与典型的 KPSS 测试一样的顺序。在时间变化平均值、差异、长期误差、共差和截取位于某些超常平板中时,我们展示的靴杆辅助测试测试在退化和非降解情景情景下都是一致的。我们用模拟模型进行独立测试的。</s>