Sieve empirical likelihood ratio tests for nonparametric functions
Jianqing Fan, Jian Zhang

TL;DR
This paper introduces sieve empirical likelihood ratio tests for nonparametric functions that do not assume a specific error distribution, extending previous methods and demonstrating asymptotic optimality and robustness.
Contribution
It develops SELR tests that relax error distribution assumptions and maintain Wilks phenomenon, with proven asymptotic properties and improved adaptability.
Findings
Tests follow asymptotic chi-squared distribution
Method achieves optimal nonparametric testing rate
Simulation confirms practical effectiveness
Abstract
Generalized likelihood ratio statistics have been proposed in Fan, Zhang and Zhang [Ann. Statist. 29 (2001) 153-193] as a generally applicable method for testing nonparametric hypotheses about nonparametric functions. The likelihood ratio statistics are constructed based on the assumption that the distributions of stochastic errors are in a certain parametric family. We extend their work to the case where the error distribution is completely unspecified via newly proposed sieve empirical likelihood ratio (SELR) tests. The approach is also applied to test conditional estimating equations on the distributions of stochastic errors. It is shown that the proposed SELR statistics follow asymptotically rescaled \chi^2-distributions, with the scale constants and the degrees of freedom being independent of the nuisance parameters. This demonstrates that the Wilks phenomenon observed in Fan,…
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Taxonomy
TopicsStatistical Methods and Inference · Statistical Methods and Bayesian Inference · Statistical Methods in Clinical Trials
