Integrated conditional moment test and beyond: when the number of covariates is divergent
成果类型:
Article
署名作者:
Tan, Falong; Zhu, Lixing
署名单位:
Hunan University; Beijing Normal University; Beijing Normal University Zhuhai
刊物名称:
BIOMETRIKA
ISSN/ISSBN:
0006-3444
DOI:
10.1093/biomet/asab009
发表日期:
2022
页码:
103122
关键词:
of-fit tests
p-regression parameters
dimension-reduction
model checks
asymptotic-behavior
functional form
consistent test
M-ESTIMATORS
difference
bootstrap
摘要:
The classical integrated conditional moment test is a promising method for model checking and its basic idea has been applied to develop several variants. However, in diverging-dimension scenarios, the integrated conditional moment test may break down and has completely different limiting properties from the fixed-dimension case. Furthermore, the related wild bootstrap approximation can also be invalid. To extend this classical test to diverging dimension settings, we propose a projected adaptive-to-model version of the integrated conditional moment test. We study the asymptotic properties of the new test under both the null and alternative hypotheses to examine if it maintains significance level, and its sensitivity to the global and local alternatives that are distinct from the null at the rate n(-1/2). The corresponding wild bootstrap approximation can still work for the new test in diverging-dimension scenarios. We also derive the consistency and asymptotically linear representation of the least squares estimator when the parameter diverges at the fastest possible known rate in the literature. Numerical studies show that the new test can greatly enhance the performance of the integrated conditional moment test in high-dimensional cases. We also apply the test to a real dataset for illustration.