semiparametrisia
Semiparametrisia is a term used in statistics and econometrics to describe a class of modeling approaches that blends parametric and nonparametric elements. In this framework, part of the model is specified with a finite set of parameters (the parametric component), while another part is left flexible and modeled without a fixed functional form (the nonparametric component). The goal is to capture well-understood relationships with a compact parametric form while allowing complex patterns to be learned from the data.
A typical semiparametric model expresses an outcome as a combination of these components. For example, a response
Estimation in semiparametria often uses techniques such as profile likelihood, backfitting, penalized splines, or kernel smoothing.
Semiparametria offers flexibility and reduced model misspecification risk relative to fully parametric models, with broad applications