Zhao Qiang, Chen Liang, Wu Jingjing
School of Mathematics and Statistics, Shandong Normal University, Jinan, Shandong, People's Republic of China.
Department of Risk Management and Oversight, TransAlta Corporation, Calgary, AB, Canada.
J Appl Stat. 2021 Aug 27;49(15):3976-4002. doi: 10.1080/02664763.2021.1970120. eCollection 2022.
It is well known that financial data frequently contain outlying observations. Almost all methods and techniques used to estimate GARCH models are likelihood-based and thus generally non-robust against outliers. Minimum distance method, as an important tool for statistical inferences and a competitive alternative for achieving robustness, has surprisingly not been well explored for GARCH models. In this paper, we proposed a minimum Hellinger distance estimator (MHDE) and a minimum profile Hellinger distance estimator (MPHDE), depending on whether the innovation distribution is specified or not, for estimating the parameters in GARCH models. The construction and investigation of the two estimators are quite involved due to the non-i.i.d. nature of data. We proved that the MHDE is a consistent estimator and derived its bias in explicit expression. For both of the proposed estimators, we demonstrated their finite-sample performance through simulation studies and compared with the well-established methods including MLE, Gaussian Quasi-MLE, Non-Gaussian Quasi-MLE and Least Absolute Deviation estimator. Our numerical results showed that MHDE and MPHDE have much better performance than MLE-based methods when data are contaminated while simultaneously they are very competitive when data is clean, which testified to the robustness and efficiency of the two proposed MHD-type estimations.
众所周知,金融数据常常包含异常观测值。几乎所有用于估计广义自回归条件异方差(GARCH)模型的方法和技术都是基于似然的,因此通常对异常值不具有稳健性。最小距离法作为统计推断的重要工具以及实现稳健性的一种有竞争力的替代方法,令人惊讶的是,尚未针对GARCH模型进行充分探索。在本文中,我们根据创新分布是否已知,提出了一种最小赫林格距离估计器(MHDE)和一种最小轮廓赫林格距离估计器(MPHDE),用于估计GARCH模型中的参数。由于数据的非独立同分布性质,这两种估计器的构建和研究相当复杂。我们证明了MHDE是一个一致估计器,并明确推导了其偏差。对于所提出的两种估计器,我们通过模拟研究展示了它们的有限样本性能,并与包括最大似然估计(MLE)、高斯拟最大似然估计、非高斯拟最大似然估计和最小绝对偏差估计器在内的成熟方法进行了比较。我们的数值结果表明,当数据受到污染时,MHDE和MPHDE的性能比基于MLE的方法要好得多,而在数据干净时它们也具有很强的竞争力,这证明了所提出的两种MHD型估计的稳健性和有效性。