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Sudden changes in extreme value volatility estimator: Modeling and forecasting with economic significance analysis

机译:极值波动率估算器的突然变化:具有经济意义分析的建模和预测

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This study provides a framework based on an extension of the conditional autoregressive range (CARR) model which incorporates the impact of sudden changes in the unconditional volatility. This study proposes to use the RS estimator in the CARR model (called henceforth the CARRS model) instead of using the range. The results of the CARES models with and without volatility breaks are compared with the results of the GARCH models with and without volatility breaks. We also compare the forecasting performance of CARRS models with the forecasting performance of EGARCH, TGARCH and FIGARCH models based on error statistics and regression approach. The findings indicate that the CARRS model with volatility breaks effectively captures the dynamics of volatility and provides better out-of-sample forecasts when compared with GARCH, EGARCH, TGARCH and FIGARCH models. We also devise a trading strategy to examine the economic significance of the proposed framework which indicates that the investor can make substantial gains (approximately 6%-10%) in return for most of cases based on volatility forecasts of CARES model with volatility breaks. Results based on robustness check are consistent with our main findings. (C) 2015 Elsevier B.V. All rights reserved.
机译:这项研究提供了一个基于条件自回归范围(CARR)模型扩展的框架,该模型结合了无条件波动性突然变化的影响。本研究建议在CARR模型(此后称为CARRS模型)中使用RS估计量,而不是使用范围。将具有和不具有波动率突破的CARES模型的结果与具有和不具有波动率突破的GARCH模型的结果进行比较。我们还基于误差统计和回归方法,将CARRS模型的预测性能与EGARCH,TGARCH和FIGARCH模型的预测性能进行了比较。研究结果表明,与GARCH,EGARCH,TGARCH和FIGARCH模型相比,具有波动突破的CARRS模型有效地捕捉了波动的动态,并提供了更好的样本外预测。我们还设计了一种交易策略,以检验所提出框架的经济意义,该框架表明,根据CARES模型的波动率预测(具有波动性突破),投资者可以在大多数情况下获得可观的收益(大约6%-10%)。基于健壮性检查的结果与我们的主要发现一致。 (C)2015 Elsevier B.V.保留所有权利。

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