Accurate confidence limits for scalar functions of vector M-estimands
成果类型:
Article
署名作者:
DiCiccio, TJ; Monti, AC
署名单位:
Cornell University; University of Sannio
刊物名称:
BIOMETRIKA
ISSN/ISSBN:
0006-3444
DOI:
10.1093/biomet/89.2.437
发表日期:
2002
页码:
437450
关键词:
general saddlepoint approximations
Edgeworth Expansion
marginal densities
M-ESTIMATORS
intervals
likelihood
bootstrap
transformations
statistics
parameter
摘要:
This paper concerns high-order inference for scalar parameters that are estimated by functions of multivariate M-estimators. Asymptotic formulae for the bias and skewness of the studentised statistic are derived. Although these formulae appear complicated, they can be evaluated easily by using matrix operations and numerical differentiation. Various methods for constructing second-order accurate confidence limits are discussed, including a method based on skewness-reducing transformations and a generalisation of the ABC method. The use of the skewness-reducing transformations is closely related to empirical likelihood; expressing the studentised statistic in terms of a skewness-reducing reparameterisation brings the standard asymptotic intervals closer in shape to empirical likelihood intervals. The improvement in one- and two-sided coverage accuracy achieved by taking the bias and skewness into account is illustrated in numerical examples. It is found in the examples that taking skewness into account by reparameterisation or parameterisation invariance yields better coverage accuracy than correcting for skewness by polynomial expansions.