Penalized Sieve Estimation and Inference of Semi-Nonparametric Dynamic Models: A Selective Review
In this selective review, we ﬁrst provide some empirical examples that motivate the usefulness of semi-nonparametric techniques in modelling economic and ﬁnancial time series. We describe popular classes of semi-nonparametric dynamic models and some temporal dependence properties. We then present penalized sieve extremum (PSE) estimation as a general method for semi-nonparametric models with cross-sectional, panel, time series, or spatial data. The method is especially powerful in estimating diﬀicult ill-posed inverse problems such as semi-nonparametric mixtures or conditional moment restrictions. We review recent advances on inference and large sample properties of the PSE estimators, which include (1) consistency and convergence rates of the PSE estimator of the nonparametric part; (2) limiting distributions of plug-in PSE estimators of functionals that are either smooth (i.e., root-n estimable) or non-smooth (i.e., slower than root-n estimable); (3) simple criterion-based inference for plug-in PSE estimation of smooth or non-smooth functionals; and (4) root-n asymptotic normality of semiparametric two-step estimators and their consistent variance estimators. Examples from dynamic asset pricing, nonlinear spatial VAR, semiparametric GARCH, and copula-based multivariate ﬁnancial models are used to illustrate the general results.
Chen, Xiaohong, "Penalized Sieve Estimation and Inference of Semi-Nonparametric Dynamic Models: A Selective Review" (2011). Cowles Foundation Discussion Papers. 2148.