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Forecasting the daily time - varying beta of European Banks during the crisis period: comparison between GARCH models and the Kalman Filter.

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This intention of this paper is to empirically forecast the daily betas of a few European banks by means of four generalized autoregressive conditional heteroscedasticity (GARCH) models and the Kalman… Click to show full abstract

This intention of this paper is to empirically forecast the daily betas of a few European banks by means of four generalized autoregressive conditional heteroscedasticity (GARCH) models and the Kalman filter method during the pre-global financial crisis period and the crisis period. The four GARCH models employed are BEKK GARCH, DCC GARCH, DCC-MIDAS GARCH and Gaussian-copula GARCH. The data consist of daily stock prices from 2001 to 2013 from two large banks each from Austria, Belgium, Greece, Holland, Ireland, Italy, Portugal and Spain. We apply the rolling forecasting method and the model confidence sets (MCS) to compare the daily forecasting ability of the five models during one month of the pre-crisis (January 2007) and the crisis (January 2013) periods. Based on the MCS results, the BEKK proves the best model in the January 2007 period, and the Kalman filter overly outperforms the other models during the January 2013 period. Results have implications regarding the choice of model during different periods by practitioners and academics

Keywords: crisis; kalman filter; garch; crisis period; garch models

Journal Title: Journal of Forecasting
Year Published: 2017

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