This paper provides a thorough overview and further clarification surrounding the volatility behavior of the major six cryptocurrencies (Bitcoin, Ripple, Litecoin, Monero, Dash and Dogecoin) with respect to world currencies (Euro, British Pound, Canadian Dollar, Australian Dollar, Swiss Franc and the Japanese Yen), the relative performance of diverse GARCH-type specifications namely the SGARCH, IGARCH (1,1), EGARCH (1,1), GJR-GARCH (1,1), APARCH (1,1), TGARCH (1,1) and CGARCH (1,1), and the forecasting performance of the Value at Risk measure. The sampled period extends from October 13th 2015 till November 18th 2019. The findings evidenced the superiority of the IGARCH model, in both the in-sample and the out-of-sample contexts, when it dea...
Many models have been developed to model, estimate and forecast financial time series volatility, am...
With the exception of Bitcoin, there appears to be little or no literature on GARCH modelling of cry...
Since Bitcoin price is highly volatile, forecasting its volatility is crucial for many applications,...
With the exception of Bitcoin, there appears to be little or no literature on GARCH modelling of cry...
This study examines the volatility of nine leading cryptocurrencies by market capitalization—Bitcoin...
© 2018 The Authors. This paper aims to select the best model or set of models for modelling volatili...
This study provides an estimation of Bitcoin's volatility using a variation of GARCH (volatility) mo...
Cryptocurrencies are rapidly growing. The energy consumption required to be mined is huge but differ...
International audienceIn this paper we study the daily volatility of four cryptocurrencies (BitCoin,...
Recently, cryptocurrencies have attracted a growing interest from investors, practitioners and resea...
We apply the GARCH-MIDAS framework to forecast the daily, weekly, and monthly volatility of five hig...
Recently, cryptocurrencies have attracted a growing interest from investors, practitioners and resea...
Getirilerin normal dağıldığı varsayımını temel alan öngörü modelleri sığ piyasalarda yeterince başar...
This study investigates how twelve cryptocurrencies with large capitalization get influenced by the ...
Many models have been developed to model, estimate and forecast financial time series volatility, am...
With the exception of Bitcoin, there appears to be little or no literature on GARCH modelling of cry...
Since Bitcoin price is highly volatile, forecasting its volatility is crucial for many applications,...
With the exception of Bitcoin, there appears to be little or no literature on GARCH modelling of cry...
This study examines the volatility of nine leading cryptocurrencies by market capitalization—Bitcoin...
© 2018 The Authors. This paper aims to select the best model or set of models for modelling volatili...
This study provides an estimation of Bitcoin's volatility using a variation of GARCH (volatility) mo...
Cryptocurrencies are rapidly growing. The energy consumption required to be mined is huge but differ...
International audienceIn this paper we study the daily volatility of four cryptocurrencies (BitCoin,...
Recently, cryptocurrencies have attracted a growing interest from investors, practitioners and resea...
We apply the GARCH-MIDAS framework to forecast the daily, weekly, and monthly volatility of five hig...
Recently, cryptocurrencies have attracted a growing interest from investors, practitioners and resea...
Getirilerin normal dağıldığı varsayımını temel alan öngörü modelleri sığ piyasalarda yeterince başar...
This study investigates how twelve cryptocurrencies with large capitalization get influenced by the ...
Many models have been developed to model, estimate and forecast financial time series volatility, am...
With the exception of Bitcoin, there appears to be little or no literature on GARCH modelling of cry...
Since Bitcoin price is highly volatile, forecasting its volatility is crucial for many applications,...