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Estimating m-regimes STAR-GARCH model using QMLE with parameter transformation

机译:使用带参数转换的QMLE估计m个区域的STAR-GARCH模型

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It is well known in the literature that obtaining the parameter estimates for the Smooth Transition Autoregressive-Generalized Autoregressive Conditional Heteroskedasticity (STAR-GARCH) can be problematic due to computational difficulties. Conventional optimization algorithms do not seem to perform well in locating the global optimum of the associated likelihood function. This makes Quasi-Maximum Likelihood Estimator (QMLE) difficult to obtain for STAR-GARCH models in practice. Curiously, there has been very little research investigating the cause of the numerical difficulties in obtaining the parameter estimates for STAR-GARCH using QMLE. The aim of the paper is to investigate the nature of the numerical difficulties using Monte Carlo Simulation. By examining the surface of the log-likelihood function based on simulated data, the results provide several insights into the difficulties in obtaining QMLE for STAR-GARCH models. Based on the findings, the paper also proposes a simple transformation on the parameters to alleviate these difficulties. Monte Carlo simulation results show promising signs for the proposed transform. The asymptotic and robust variance-covariance matrices of the original parameter estimates are derived as a function of the transformed parameter estimates, which greatly facilitates inferences on the original parameters.
机译:在文献中众所周知,由于计算困难,获得平滑过渡自回归-广义自回归条件异方差(STAR-GARCH)的参数估计可能是有问题的。传统的优化算法在定位关联似然函数的全局最优值时似乎表现不佳。这使得在实践中难以获得STAR-GARCH模型的拟最大似然估计器(QMLE)。奇怪的是,很少有研究调查使用QMLE获得STAR-GARCH参数估计值的数值困难的原因。本文的目的是使用蒙特卡洛模拟研究数值困难的性质。通过基于模拟数据检查对数似然函数的表面,结果为STAR-GARCH模型获得QMLE的困难提供了一些见解。基于这些发现,本文还提出了参数的简单转换以减轻这些困难。蒙特卡洛模拟结果显示了提出的变换的有希望的迹象。原始参数估计值的渐近和鲁棒方差-协方差矩阵是转换后的参数估计值的函数,极大地方便了对原始参数的推断。

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