TY - JOUR
T1 - Exploring asymmetries in cryptocurrency intraday returns and implied volatility
T2 - New evidence for high-frequency traders
AU - Karim, Muhammad Mahmudul
AU - Shah, Mohamed Eskandar
AU - Noman, Abu Hanifa Md
AU - Yarovaya, Larisa
N1 - Publisher Copyright:
© 2024
PY - 2024/11
Y1 - 2024/11
N2 - This paper aims to analyze the return-volatility relationship of Bitcoin and Ethereum across different return frequencies and all conditional quantiles of implied volatility, based on a unique 6.5 million observations. We employ the newly constructed Model-Free Implied Volatility (MFIV) of Bitcoin (BitVol) and Ethereum (EthVol) and use an asymmetric Quantile Regression Model (QRM) to capture the intraday asymmetric return-volatility relationship at different quantiles of the distribution of the dependent variable. Our findings show that the estimated coefficient using daily data is significant only at medium- to high-volatility regimes, while the estimated coefficients using high-frequency data are highly significant across all volatility regimes. Moreover, our results indicate that the asymmetry varies across frequencies and quantiles, with weak asymmetric effects at low quantiles and high frequencies, and strong asymmetric effects at high quantiles and low frequencies. This study provides new insight, especially for high-frequency traders.
AB - This paper aims to analyze the return-volatility relationship of Bitcoin and Ethereum across different return frequencies and all conditional quantiles of implied volatility, based on a unique 6.5 million observations. We employ the newly constructed Model-Free Implied Volatility (MFIV) of Bitcoin (BitVol) and Ethereum (EthVol) and use an asymmetric Quantile Regression Model (QRM) to capture the intraday asymmetric return-volatility relationship at different quantiles of the distribution of the dependent variable. Our findings show that the estimated coefficient using daily data is significant only at medium- to high-volatility regimes, while the estimated coefficients using high-frequency data are highly significant across all volatility regimes. Moreover, our results indicate that the asymmetry varies across frequencies and quantiles, with weak asymmetric effects at low quantiles and high frequencies, and strong asymmetric effects at high quantiles and low frequencies. This study provides new insight, especially for high-frequency traders.
KW - Asymmetric
KW - Cryptocurrencies
KW - Quintile regression
KW - Return frequencies
KW - Return-volatility
UR - http://www.scopus.com/inward/record.url?scp=85206007976&partnerID=8YFLogxK
U2 - 10.1016/j.irfa.2024.103617
DO - 10.1016/j.irfa.2024.103617
M3 - Article
AN - SCOPUS:85206007976
SN - 1057-5219
VL - 96
JO - International Review of Financial Analysis
JF - International Review of Financial Analysis
M1 - 103617
ER -