Nonparametric approach for non-Gaussian vector stationary processes

被引:25
|
作者
Taniguchi, M
Puri, ML
Kondo, M
机构
[1] INDIANA UNIV,BLOOMINGTON,IN 47405
[2] KAGOSHIMA UNIV,KORIMOTO,JAPAN
关键词
non-Gaussian vector stationary process; nonparametric hypothesis testing; spectral density matrix; fourth-order cumulant spectral density; non-Gaussian robustness; efficacy; measure of linear dependence; principal components; analysis of time series; nonparametric spectral estimator; asymptotic theory;
D O I
10.1006/jmva.1996.0014
中图分类号
O21 [概率论与数理统计]; C8 [统计学];
学科分类号
020208 ; 070103 ; 0714 ;
摘要
Suppose that {z(t)} is a non-Gaussian vector stationary process with spectral density matrix f(lambda). In this paper we consider the testing problem H: integral(-pi)(pi) K{f(lambda} d lambda = c against A: integral(-pi)(pi) K{f(lambda)} d lambda not equal c, where K{.} is an appropriate function and c is a given constant. For this problem we propose a test T-n based on integral(-pi)(pi) K{(f) over cap(n)(lambda)} d lambda, where (f) over cap(n)$(lambda) is a nonparametric spectral estimator of f(lambda), and we define an efficacy of T-n under a sequence of nonparametric contiguous alternatives. The efficacy usually depnds on the fourth-order cumulant spectra f(4)(z) of z(t). If it does not depend on f(4)(z), we say that T-n is non-Gaussian robust. We will give sufficient conditions for T-n to be non-Gaussian robust. Since our test setting is very wide we can apply the result to many problems in time series. We discuss interrelation analysis of the components of {z(t)} and eigenvalue analysis of f(lambda). The essential point of our approach is that we do not assume the parametric form of f(lambda). Also some numerical studies are given and they confirm the theoretical results. (C) 1996 Academic Press, Inc.
引用
收藏
页码:259 / 283
页数:25
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