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Estimation of STAR-GARCH Models with Iteratively Weighted Least Squares

机译:具有迭代加权最小二乘的STAR-GARCH模型的估计

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摘要

This study applies the Iteratively Weighted Least Squares (IWLS) algorithm to a Smooth Transition Autoregressive (STAR) model with conditional variance. Monte Carlo simulations are performed to measure the performance of the algorithm, to compare its performance to the established methods in the literature, and to see the effect of the initial value selection method. The simulation results show that lower bias and mean squared error values are received for the slope parameter estimator from the IWLS algorithm in comparison to the other methods when the real value of the slope parameter is low. In an empirical illustration, the STAR-GARCH model is used to forecast daily US Dollar/Australian Dollar and the FTSE Small Cap index returns. 1-day ahead out-of-sample forecast results show that the forecast performance of the STAR-GARCH model improves with the IWLS algorithm and the model performs better than the benchmark model.
机译:本研究将迭代加权最小二乘(IWLS)算法应用于具有条件方差的平滑过渡自回归(STAR)模型。进行蒙特卡洛模拟以测量算法的性能,将其性能与文献中已建立的方法进行比较,并查看初始值选择方法的效果。仿真结果表明,当斜率参数的实际值较低时,与其他方法相比,IWLS算法为斜率参数估计器提供了更低的偏差和均方误差值。在实证中,STAR-GARCH模型用于预测每日美元/澳元和富时小型股指数的回报。提前1天的样本外预测结果表明,使用IWLS算法可以提高STAR-GARCH模型的预测性能,并且该模型的性能优于基准模型。

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