一类GARCH模型的改进估计方法

P. Létourneau
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引用次数: 0

摘要

本文对一类GARCH模型提出了一种改进的估计和校准方法。所提出的方法固定了一个参数,使得模型的无条件峰度与样本峰度相匹配。使用Engle和Ng(1993)的NGARCH(1,1)模型进行的实证分析表明,该方法在多种方面优于以往的估计方法。优化问题被简化,并且对初始值不那么敏感。无论是根据历史回报进行估计还是根据期权价格进行校准,优化时间都减少了大约50%。样本内拟合几乎没有受到影响,而样本内和样本外的期权定价都得到了改善。主题:统计方法、定量方法、期权、衍生品
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Improved Estimation Method for a Family of GARCH Models
This article proposes an improved estimation and calibration method to a family of GARCH models. The suggested method fixes one parameter such that the unconditional kurtosis of the model matches the sample kurtosis. An empirical analysis using Engle and Ng’s (1993) NGARCH(1,1) model shows that the method dominates previous estimation methods in multiple ways. The optimization problem is simplified and made less sensitive to initial values. The optimization time, both when estimating based on historical returns and calibrating to option prices, is reduced by roughly 50%. The in-sample fit is barely affected, while the option pricing, both in sample and out of sample, is improved. TOPICS: Statistical methods, quantitative methods, options, derivatives
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