
doi: 10.1111/stan.12170
We consider nonlinear heteroscedastic single‐index models where the mean function is a parametric nonlinear model and the variance function depends on a single‐index structure. We develop an efficient estimation method for the parameters in the mean function by using the weighted least squares estimation, and we propose a “delete‐one‐component” estimator for the single‐index in the variance function based on absolute residuals. Asymptotic results of estimators are also investigated. The estimation methods for the error distribution based on the classical empirical distribution function and an empirical likelihood method are discussed. The empirical likelihood method allows for incorporation of the assumptions on the error distribution into the estimation. Simulations illustrate the results, and a real chemical data set is analyzed to demonstrate the performance of the proposed estimators.
Parametric inference, Linear inference, regression, kernel smoothing, empirical likelihood, Nonparametric inference, single-index, efficient estimator, empirical distribution function
Parametric inference, Linear inference, regression, kernel smoothing, empirical likelihood, Nonparametric inference, single-index, efficient estimator, empirical distribution function
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