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Semiparametric regression
In statistics, semiparametric regression includes regression models that combine parametric and nonparametric models. They are often used in situations where the fully nonparametric model may not perform well or when the researcher wants to use a parametric model but the functional form with respect to a subset of the regressors or the density of the errors is not known. Semiparametric regression models are a particular type of semiparametric modelling and, since semiparametric models contain a parametric component, they rely on parametric assumptions and may be misspecified and inconsistent, just like a fully parametric model.
Contents
- Semiparametric regression
- Methods
- Partially linear models
- Index models
- Ichimuras method
- Klein and Spadys estimator
- Smooth coefficientvarying coefficient models
- References
Methods
Many different semiparametric regression methods have been proposed and developed. The most popular methods are the partially linear, index and varying coefficient models.
Partially linear models
A partially linear model is given by
where
This method is implemented by obtaining a
Index models
A single index model takes the form
where
Ichimura's method
The single index model method developed by Ichimura (1993) is as follows. Consider the situation in which
Since the functional form of
using kernel method. Ichimura (1993) proposes estimating
the leave-one-out nonparametric kernel estimator of
Klein and Spady's estimator
If the dependent variable
where
Smooth coefficient/varying coefficient models
Hastie and Tibshirani (1993) propose a smooth coefficient model given by
where