Contents Online
Statistics and Its Interface
Volume 2 (2009)
Number 1
Empirical likelihood based inference for additive partial linear measurement error models
Pages: 83 – 90
DOI: https://dx.doi.org/10.4310/SII.2009.v2.n1.a8
Authors
Abstract
This paper considers statistical inference for additive partial linear models when the linear covariate is measured with error. To improve the accuracy of the normal approximation based confidence intervals, we develop an empirical likelihood based statistic, which is shown to be asymptotically chi-square distributed. We emphasize the finite-sample performance of the proposed method by conducting simulation experiments. The method is used to analyze the relationship between semen quality and phthalate exposure from an environment study.
Keywords
backfitting, correction-for-attenuation, coverage probability, error-prone, local linear regression, semiparamatric estimation, undersmoothing
2010 Mathematics Subject Classification
Primary 60Gxx, 62G10. Secondary 62G20.
Published 1 January 2009