Nonparametric estimation of fixed effects panel data varying coefficient models

نویسندگان

  • Juan M. Rodríguez-Póo
  • Alexandra Soberón
چکیده

JEL classification: C14 C23 AMS subject classifications: 62G08 62G20 62P20 Keywords: Varying coefficient models Fixed effects Panel data Local linear regression Oracle efficient estimator Within estimator Profile least squares estimator a b s t r a c t In this paper, we consider the nonparametric estimation of a varying coefficient fixed effect panel data model. The estimator is based in a within (un-smoothed) transformation of the regression model and then a local linear regression is applied to estimate the unknown varying coefficient functions. It turns out that the standard use of this technique produces a non-negligible asymptotic bias. In order to avoid it, a high dimensional kernel weight is introduced in the estimation procedure. As a consequence, the asymptotic bias is removed but the variance is enlarged, and therefore the estimator shows a very slow rate of convergence. In order to achieve the optimal rate, we propose a one-step backfit-ting algorithm. The resulting two-step estimator is shown to be asymptotically normal and its rate of convergence is optimal within its class of smoothness functions. It is also oracle efficient. Further, this estimator is compared both theoretically and by Monte-Carlo simulation against other estimators that are based in a within (smoothed) transformation of the regression model. More precisely the profile least-squares estimator proposed in this context in Sun et al. (2009). It turns out that the smoothness in the transformation enlarges the bias and it makes the estimator more difficult to analyze from the statistical point of view. However, the first step estimator, as expected, shows a bad performance when compared against both the two step backfitting algorithm and the profile least-squares estimator. 1. Introduction This paper is concerned with the nonparametric estimation and inference of panel data varying coefficient models with fixed effects. In fact, in the random effect setting, direct estimation through the use of standard nonparametric techniques is straightforward and there is only need to care about efficiency issues (see for example [14] or [6]). However, in the fixed effect framework, direct estimation of the functions of interest produces asymptotically biased estimators. This is due to the correlation that exists between the heterogeneity term and the explanatory variables. Traditionally, standard techniques in fixed effect panel data models consist in removing the heterogeneity term by transforming the statistical model of departure. Following Su and Ullah [17] there exist, at least, two different alternative transformations. On one side, the so-called …

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عنوان ژورنال:
  • J. Multivariate Analysis

دوره 133  شماره 

صفحات  -

تاریخ انتشار 2015