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Título
Portfolio Risk Assessment under Dynamic (Equi)Correlation and Semi-Nonparametric Estimation: An Application to Cryptocurrencies
Autor(es)
Palabras clave
Gram-Charlier series
DCC
DECO
Backtesting
Cryptocurrencies
Clasificación UNESCO
5308 Economía General
Fecha de publicación
2020-11-26
Editor
MDPI
Citación
Jiménez, I., Mora-Valencia, A., Ñíguez, T.-M., & Perote, J. (2020). Portfolio risk assessment under dynamic (Equi)correlation and semi-nonparametric estimation: An application to cryptocurrencies. Mathematics, 8(12), 1-24. https://doi.org/10.3390/MATH8122110
Resumen
[EN] The semi-nonparametric (SNP) modeling of the return distribution has been proven to be a flexible and accurate methodology for portfolio risk management that allows two-step estimation of the dynamic conditional correlation (DCC) matrix. For this SNP-DCC model, we propose a stepwise procedure to compute pairwise conditional correlations under bivariate marginal SNP distributions, overcoming the curse of dimensionality. The procedure is compared to the assumption of dynamic
equicorrelation (DECO), which is a parsimonious model when correlations among the assets are not significantly different but require joint estimation of the multivariate SNP model. The risk assessment of both methodologies is tested for a portfolio of cryptocurrencies by implementing backtesting techniques and for different risk measures: value-at-risk, expected shortfall, and median shortfall. The results support our proposal showing that the SNP-DCC model has better performance for lower confidence levels than the SNP-DECO model and is more appropriate for portfolio diversification purposes.
URI
ISSN
2227-7390
DOI
10.3390/math8122110
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Porffolio Risk assessment













