Nonparametric inference with generalized likelihood ratio tests

被引:0
作者
Jianqing Fan
Jiancheng Jiang
机构
[1] Princeton University,Department of ORFE
[2] University of North Carolina at Charlotte,Department of Mathematics and Statistics
来源
TEST | 2007年 / 16卷
关键词
Asymptotic null distribution; Bootstrap; Generalized likelihood ratio; Nonparametric test; Power function; Wilks’ phenomenon; 62G07; 62G10; 62J12;
D O I
暂无
中图分类号
学科分类号
摘要
The advance of technology facilitates the collection of statistical data. Flexible and refined statistical models are widely sought in a large array of statistical problems. The question arises frequently whether or not a family of parametric or nonparametric models fit adequately the given data. In this paper we give a selective overview on nonparametric inferences using generalized likelihood ratio (GLR) statistics. We introduce generalized likelihood ratio statistics to test various null hypotheses against nonparametric alternatives. The trade-off between the flexibility of alternative models and the power of the statistical tests is emphasized. Well-established Wilks’ phenomena are discussed for a variety of semi- and non-parametric models, which sheds light on other research using GLR tests. A number of open topics worthy of further study are given in a discussion section.
引用
收藏
页码:409 / 444
页数:35
相关论文
共 164 条
  • [1] Anderson TW(1993)Goodness of fit tests for spectral distributions Ann Stat 21 830-847
  • [2] Azzalini A(1989)On the use of nonparametric regression for model checking Biometrika 76 1-11
  • [3] Bowman AN(1962)Likelihood inference and time series J R Stat Soc Ser A 125 321-372
  • [4] Härdle W(1973)On some global measures of the deviation of density function estimates Ann Stat 1 1071-1095
  • [5] Barnard GA(1962)On the foundations of statistical inference (with discussion) J Am Stat Assoc 57 269-326
  • [6] Jenkins GM(1996)A constrained risk inequality with applications to nonparametric functional estimation Ann Stat 24 2524-2535
  • [7] Winsten CB(1998)Smoothing spline models for the analysis of nested and crossed samples of curves (with discussion) J Am Stat Assoc 93 961-994
  • [8] Bickel PJ(1989)Linear smoothers and additive models Ann Stat 17 453-555
  • [9] Rosenblatt M(2000)Efficient estimation and inferences for varying-coefficient models J Am Stat Assoc 95 888-902
  • [10] Birnbaum A(2000)Functional-coeficient regression models for nonlinear time series J Am Stat Assoc 95 941-956