SOUND CONFIDENCE-INTERVALS IN THE HETEROSCEDASTIC LINEAR-MODEL THROUGH RELEVERAGING
成果类型:
Article
署名作者:
DORFMAN, AH
刊物名称:
JOURNAL OF THE ROYAL STATISTICAL SOCIETY SERIES B-STATISTICAL METHODOLOGY
ISSN/ISSBN:
1369-7412
发表日期:
1991
页码:
441-452
关键词:
COVARIANCE-MATRIX ESTIMATOR
regression
jackknife
heteroskedasticity
diagnostics
bootstrap
variance
摘要:
Under heteroscedasticity, ordinary least squares regression can fail to yield adequate inference on parameter coefficients with respect to hypothesis testing or confidence intervals. For example, confidence intervals can have coverage well below that claimed. This is especially the case in small or moderate-sized imbalanced samples and holds even if the ordinary least squares variance estimator is replaced by a robust-against-heteroscedasticity variance estimator. A new simple weighting scheme corrects this problem, although at possibly serious cost in efficiency. Inefficient methods have been rated as useful at the data exploration stage of analysis. The present method is also useful as an adjunct to least squares regression, at the stage of regression diagnostics. As such, it can sometimes replace the need for them altogether.