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首页> 外文期刊>Journal of Forecasting >Forecasting Ability of GARCH vs Kalman Filter Method: Evidence from Daily UK Time-Varying Beta
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Forecasting Ability of GARCH vs Kalman Filter Method: Evidence from Daily UK Time-Varying Beta

机译:GARCH与卡尔曼滤波方法的预测能力:来自每日英国时变Beta的证据

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This paper investigates the forecasting ability of four different GARCH models and the Kalman filter method. The four GARCH models applied are the bivariate GARCH, BEKK GARCH, GARCH-GJR and the GARCH-X model. The paper also compares the forecasting ability of the non-GARCH model: the Kalman method. Forecast errors based on 20 UK company daily stock return (based on estimated time-varying beta) forecasts are employed to evaluate out-of-sample forecasting ability of both GARCH models and Kalman method. Measures of forecast errors overwhelmingly support the Kalman filter approach. Among the GARCH models the GJR model appears to provide somewhat more accurate forecasts than the other bivariate GARCH models. Copyright (c) 2008 John Wiley & Sons, Ltd.
机译:本文研究了四种不同的GARCH模型和Kalman滤波方法的预测能力。应用的四个GARCH模型是双变量GARCH,BEKK GARCH,GARCH-GJR和GARCH-X模型。本文还比较了非GARCH模型的预测能力:卡尔曼方法。基于20个英国公司每日股票回报(基于估计的随时间变化的beta)预测的预测误差用于评估GARCH模型和Kalman方法的样本外预测能力。预测误差的度量绝大多数支持卡尔曼滤波方法。在GARCH模型中,GJR模型似乎提供了比其他双变量GARCH模型更准确的预测。版权所有(c)2008 John Wiley&Sons,Ltd.

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