非对称随机波动模型的数据克隆估计

Data cloning estimation for asymmetric stochastic volatility models

Econometric Reviews · 2020
被引 5
人大 A-ABS 3

中文导读

提出用数据克隆方法估计一般单变量非对称随机波动模型,通过MCMC计算最大似然估计,模拟显示计算高效,可用于S&P 500和FTSE-100日收益率的波动预测。

Abstract

The paper proposes the use of data cloning (DC) to the estimation of general univariate asymmetric stochastic volatility (ASV) models with flexible distributions for the standardized returns. These models are able to capture the asymmetric volatility, the leptokurtosis and the skewness of the distribution of returns. Data cloning is a general technique to compute maximum likelihood estimators, along with their asymptotic variances, by means of a Markov chain Monte Carlo (MCMC) methodology. The main aim of this paper is to illustrate how easily general univariate ASV models can be estimated and consequently studied via data cloning. Changes of specifications, priors and sampling error distributions are done with minor modifications of the code. Using an intensive simulation study, the finite sample properties of the estimators of the parameters are evaluated and compared to those of a benchmark estimator that is also user-friendly. The results show that the proposed estimator is computationally efficient, and can be an effective alternative to the existing estimation methods applied to ASV models. Finally, we use data cloning to estimate the parameters of general ASV models and forecast the one-step-ahead volatility of S&P 500 and FTSE-100 daily returns.

数据克隆非对称随机波动模型极大似然估计马尔可夫链蒙特卡罗