半参数持续期模型的一种简单R估计方法

A Simple R-estimation method for semiparametric duration models

Journal of Econometrics · 2020
被引 9
人大 AABS 4

中文导读

针对自回归条件持续期模型,提出一种基于秩的R估计方法,在未知创新分布下保持根n一致性,无需核估计,且效率优于指数拟似然估计。

Abstract

Modeling nonnegative financial variables (e.g. durations between trades or volatilities) is central to a number of studies across econometrics, and still poses several statistical challenges. Among them, the efficiency aspects of semiparametric estimation remain pivotal. In this paper, we concentrate on estimation problems in autoregressive conditional duration models with unspecified innovation densities. Exponential quasi-likelihood estimators (QMLE) are the usual practice in that context, since they are easy-to-implement and preserve Fisher-consistency. However, the efficiency of the QMLE rapidly deteriorates away from the reference exponential density. To cope with the QMLE's lack of accuracy, semiparametrically efficient procedures have been introduced. These procedures are obtained using the classical tangent space approach; they require kernel estimation and quite large sample sizes. We propose rank-based estimators (R-estimators) as a substitute. Just as the QMLE, R-estimators remain root-n consistent, irrespective of the underlying density, and rely on the choice of a reference density (which, however, needs not be the exponential one), under which they achieve semiparametric efficiency. Moreover, R-estimators neither require tangent space calculations nor kernel estimation. Numerical results illustrate that R-estimators based on the exponential reference density outperform the QMLE under a large class of actual innovation densities, such as the Weibull or Burr densities. A real-data example about modeling the price range of the Swiss stock market index concludes the paper.

半参数持续期模型R估计量自回归条件持续期模型半参数效率