Spillover Risks on Cryptocurrency Markets: A Look from VAR-SVAR Granger Causality and Student’s-t Copulas
Abstract
:When you do physics you are playing against God; in finance, you are playing against God’s creatures.(Emanuel Derman)
1. Introduction
2. Literature Review
2.1. Terminology and Basic Concepts
2.2. Bitcoin and Cryptocurrency Markets
2.3. General Spillover Risks
2.4. Relevant Studies in Terms of Spillover Risks on the Cryptocurrency Markets
3. Data and Methodology
3.1. Data
3.2. Methodology
3.2.1. Pearson Correlation
3.2.2. Vector Autoregressive Model (VAR)
3.2.3. Structural Vector Autoregressive Model (SVAR)
3.2.4. Granger Causality
3.2.5. Copulas Approaches
4. Empirical Findings
4.1. Correlation Matrix
4.2. Test of Stationary
4.3. VAR Granger Causality Findings
4.4. SVAR Granger Causality Results
4.5. Copulas Approach
4.6. Summary of Findings
5. Conclusions and Implications
Funding
Acknowledgments
Conflicts of Interest
References
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1 | It becomes one of popular practices to perform the verification for historical online confirmation among trading parties. |
2 | It was measured by the gap between the US industrial yields and the US Treasury bond. |
3 | Least Absolute Shrinkage and Selection Operator and Vector Autoregressive Model. |
4 | Selection-order criteria based on rich set of parameters such as the Log-Likelihood (LL), the Likelihood ratio (LR), the Prediction Error (FPE), the Akaike’s Information Criterion (AIC), the Schwarz’s Bayesian Information Criterion (SBIC), and the Hannan and Quinn Information Criterion (HQIC). |
5 | The VAR model estimation for VAR Granger causality is based on the suggested lag by Lütkepohl (2005) with the L(3) term and we also employed the multivariate VAR (all of the cryptocurrencies) in our models to test the spillover effects rather than bivariable (it might be omitted the effects from other cryptocurrencies). |
Variable | Mean | Std. Dev. | Min | Max | Skewness | Kurtosis |
---|---|---|---|---|---|---|
bitcoin | 0.002163 | 0.040021 | −0.20753 | 0.225119 | −0.2623099 | 7.720781 |
ethereum | 0.004276 | 0.068703 | −0.31547 | 0.412337 | 0.4963407 | 7.554288 |
xrp | 0.003004 | 0.075708 | −0.61627 | 1.027356 | 2.987435 | 41.54075 |
litecoin | 0.001711 | 0.057338 | −0.39515 | 0.510348 | 1.271329 | 15.6589 |
stellar | 0.003104 | 0.083676 | −0.36636 | 0.723102 | 2.030118 | 18.3531 |
Bitcoin | Ethereum | xrp | Litecoin | Stellar | |
---|---|---|---|---|---|
bitcoin | 1 | ||||
ethereum | 0.3992 *** | 1 | |||
xrp | 0.3043 *** | 0.2587 *** | 1 | ||
litecoin | 0.6113 *** | 0.3871 *** | 0.3609 *** | 1 | |
stellar | 0.3661 *** | 0.2789 *** | 0.5488 *** | 0.3857 *** | 1 |
Variables | Augmented Dickey–Fuller | Phillips–Perron | Zivot–Andrews |
---|---|---|---|
bitcoin | −34.983 *** | −35.005 *** | −13.900 *** |
ethereum | −33.161 *** | −33.288 *** | −18.966 *** |
xrp | −35.585 *** | −35.934 *** | −13.027 *** |
litecoin | −34.731 *** | −34.809 *** | −12.725 *** |
stellar | −32.703 *** | −32.760 *** | −14.925 *** |
Pairs | Gaussian Copula | Student’s-t Copulas |
---|---|---|
bitcoin-ethereum | 0.4148 [115.7] | 0.4334 [160.1] |
bitcoin-xrp | 0.4135 [114.9] | 0.4389 [162.6] |
bitcoin-litecoin | 0.6894 [397.5] | 0.7367 [525.5] |
bitcoin-stellar | 0.4217 [120] | 0.4328 [161.8] |
ethereum-xrp | 0.3958 [104.4] | 0.4467 [145.5] |
ethereum-litecoin | 0.4484 [137.7] | 0.4793 [173.5] |
ethereum-stellar | 0.3842 [97.8] | 0.4284 [132.4] |
xrp-litecoin | 0.4872 [166.3] | 0.5453 [268.4] |
xrp-stellar | 0.5921 [265.5] | 0.6001 [330.2] |
litecoin-stellar | 0.481 [161.5] | 0.5058 [207.6] |
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Luu Duc Huynh, T. Spillover Risks on Cryptocurrency Markets: A Look from VAR-SVAR Granger Causality and Student’s-t Copulas. J. Risk Financial Manag. 2019, 12, 52. https://doi.org/10.3390/jrfm12020052
Luu Duc Huynh T. Spillover Risks on Cryptocurrency Markets: A Look from VAR-SVAR Granger Causality and Student’s-t Copulas. Journal of Risk and Financial Management. 2019; 12(2):52. https://doi.org/10.3390/jrfm12020052
Chicago/Turabian StyleLuu Duc Huynh, Toan. 2019. "Spillover Risks on Cryptocurrency Markets: A Look from VAR-SVAR Granger Causality and Student’s-t Copulas" Journal of Risk and Financial Management 12, no. 2: 52. https://doi.org/10.3390/jrfm12020052
APA StyleLuu Duc Huynh, T. (2019). Spillover Risks on Cryptocurrency Markets: A Look from VAR-SVAR Granger Causality and Student’s-t Copulas. Journal of Risk and Financial Management, 12(2), 52. https://doi.org/10.3390/jrfm12020052