This study examines the volatility of nine leading cryptocurrencies by market capitalization-Bitcoin, XRP, Ethereum, Bitcoin Cash, Stellar, Litecoin, TRON, Cardano, and IOTA-by using a Bayesian Stochastic Volatility (SV) model and several GARCH models. We find that when we deal with extremely volatile financial data, such as cryptocurrencies, the SV model performs better than the GARCH family models. Moreover, the forecasting errors of the SV model, compared with the GARCH models, tend to be more accurate as forecast time horizons are longer. This deepens our insight into volatility forecast models in the complex market of cryptocurrencies
Getirilerin normal dağıldığı varsayımını temel alan öngörü modelleri sığ piyasalarda yeterince başar...
We propose to measure volatilities of 102 active cryptocurrencies using Garman and Klass (GK) volati...
© 2017 IEEE. The 2008 financial crisis had scattered incredulity around the globe regarding traditio...
This study examines the volatility of nine leading cryptocurrencies by market capitalization—Bitcoin...
This paper compares a number of stochastic volatility (SV) models for modeling and predicting the vo...
© 2018 The Authors. This paper aims to select the best model or set of models for modelling volatili...
This paper studies the forecasting ability of cryptocurrency time series. This study is about the fo...
With the exception of Bitcoin, there appears to be little or no literature on GARCH modelling of cry...
This paper provides a thorough overview and further clarification surrounding the volatility behavio...
Recently, cryptocurrencies have attracted a growing interest from investors, practitioners and resea...
Recently, cryptocurrencies have attracted a growing interest from investors, practitioners and resea...
This study provides an estimation of Bitcoin's volatility using a variation of GARCH (volatility) mo...
This study explores Bitcoin’s volatility characteristics using different extensions of the GARCH mod...
We apply the GARCH-MIDAS framework to forecast the daily, weekly, and monthly volatility of five hig...
In the recent years, cryptocurrencies have gained popularity and have experienced high price volatil...
Getirilerin normal dağıldığı varsayımını temel alan öngörü modelleri sığ piyasalarda yeterince başar...
We propose to measure volatilities of 102 active cryptocurrencies using Garman and Klass (GK) volati...
© 2017 IEEE. The 2008 financial crisis had scattered incredulity around the globe regarding traditio...
This study examines the volatility of nine leading cryptocurrencies by market capitalization—Bitcoin...
This paper compares a number of stochastic volatility (SV) models for modeling and predicting the vo...
© 2018 The Authors. This paper aims to select the best model or set of models for modelling volatili...
This paper studies the forecasting ability of cryptocurrency time series. This study is about the fo...
With the exception of Bitcoin, there appears to be little or no literature on GARCH modelling of cry...
This paper provides a thorough overview and further clarification surrounding the volatility behavio...
Recently, cryptocurrencies have attracted a growing interest from investors, practitioners and resea...
Recently, cryptocurrencies have attracted a growing interest from investors, practitioners and resea...
This study provides an estimation of Bitcoin's volatility using a variation of GARCH (volatility) mo...
This study explores Bitcoin’s volatility characteristics using different extensions of the GARCH mod...
We apply the GARCH-MIDAS framework to forecast the daily, weekly, and monthly volatility of five hig...
In the recent years, cryptocurrencies have gained popularity and have experienced high price volatil...
Getirilerin normal dağıldığı varsayımını temel alan öngörü modelleri sığ piyasalarda yeterince başar...
We propose to measure volatilities of 102 active cryptocurrencies using Garman and Klass (GK) volati...
© 2017 IEEE. The 2008 financial crisis had scattered incredulity around the globe regarding traditio...