Estimating GARCH(1,1) in the presence of missing data

D. C. Wee, Feng Chen, William T. M. Dunsmuir
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Abstract

Maximum likelihood estimation of the famous GARCH(1,1) model is generally straightforward given the full observation series. However, when some observations are missing, the marginal likelihood of the observed data is intractable in most cases of interest. Also intractable is the likelihood from temporally aggregated data. For both these problems, we propose to approximate the intractable likelihoods through sequential Monte Carlo (SMC). The SMC approximation is done in a smooth manner so that the resulting approximate likelihoods can be numerically optimized to obtain parameter estimates. In the case with data aggregation, the use of SMC is made possible by a novel state space representation of the aggregated GARCH series. Through extensive simulation experiments, the proposed method is found to be computationally feasible and produce more accurate estimators of the model parameters compared with other recently published methods, especially in the case with aggregated data. In addition, the Hessian matrix of the minus logarithm of the approximate likelihood can be inverted to produce fairly accurate standard error estimates. The proposed methodology is applied to the analysis of time series data on several exchange-traded funds on the Australian Stock Exchange with missing prices due to interruptions such as scheduled trading holidays.
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缺失数据下GARCH(1,1)的估计
对于完整的观测序列,著名的GARCH(1,1)模型的最大似然估计通常是直接的。然而,当一些观测值缺失时,观测数据的边际似然在大多数情况下是难以处理的。同样棘手的是来自临时汇总数据的可能性。对于这两个问题,我们提出用序贯蒙特卡罗(SMC)逼近难处理似然。SMC近似以平滑的方式完成,因此所得的近似似然可以在数值上优化以获得参数估计。在数据聚合的情况下,通过聚合GARCH序列的一种新的状态空间表示,SMC的使用成为可能。通过大量的仿真实验,发现该方法在计算上是可行的,并且与其他最近发表的方法相比,可以得到更准确的模型参数估计,特别是在汇总数据的情况下。此外,可以将近似似然的负对数的Hessian矩阵倒置,以产生相当准确的标准误差估计。所提出的方法被应用于分析澳大利亚证券交易所(Australian Stock Exchange)几只交易所交易基金(etf)的时间序列数据,这些数据由于预定的交易假期等中断而导致价格缺失。
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