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Suggested Statistical Models for Analysis Non-stationary Time Series and Sudden Changes with Application on Stock Exchange Indices

机译:建议的统计模型分析非静止时间序列和突然变化与股票交易所申请

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This study evaluates the performance of a group of GARCH models under three different distributions in terms of their ability to estimate and forecasting the volatility of Egyptian Stock Exchange General Index (EGX30) in some horizon of forecasting using daily data for the period from January 2, 2000 to April 30, 2019, and tries to determine the best model according to some criteria. The primary purpose of the study is to investigate whether the two-regime MSW-GARCH model outperforms the uni-regime GARCH models in a very volatile time period during the global financial crisis. Hence, evaluating the predictive accuracy of the MSW-GARCH, and whether the MSW-GARCH assessed on the EGX30 would be successful. We explore and compare different possible sources of forecasts improvements: asymmetry in the conditional variance, fat-tailed distributions and regime-switching methodology. The results show that; there is an evidence that the EGX30 index has been affected by the crisis, and the TGARCH models are superior in predictive ability on EGX30 compared to the other tested models. Consequently, uni-regime GARCH models has priority in MSW-GARCH models in their forecasting performance. These models yield significantly better out-of-sample volatility forecasts.
机译:本研究评估了一组不同分布的一组GARCH模型的性能,以便在他们在1月2日期间预测的某些地区估计和预测埃及证券交易所总指数(EGX30)的波动性的情况下, 2000年至2019年4月30日,并试图根据一些标准确定最佳模型。该研究的主要目的是调查两种制度MSW-GARCH模型是否在全球金融危机期间在非常波动的时间段内优于大型加拉奇模型。因此,评估MSW-GARCH的预测准确性,以及在EGX30上评估的MSW-GARCH是否会成功。我们探索并比较不同可能的预测来源改进:不对称条件方差,脂肪尾分布和制度切换方法。结果表明;有一种证据表明,与其他测试模型相比,EGX30指数受到危机的影响,TGARCH模型在EGX30上的预测能力优异。因此,Uni-emmime GARCH模型在预测性能中优先于MSW-GARCH模型。这些模型的产量显着更好地超出样本波动率预测。

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