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bayesDccGARCH R package: Methods and tools for Bayesian analysis of DCC-GARCH(1,1) Model.

Description

In this R package we implemented functions for Bayesian analysis of DCC-GARCH(1,1) Model using the same modelling of Fioruci et al (2014a). Several probabilities distributions are available for the errors which can model both skewness and heavy tails. See Fioruci et al (2014b) for more details about the package.

Author(s)

Jose Augusto Fiorucci, Ricardo Sandes Ehlers and Francisco Louzada. Maintainer: Jose Augusto Fiorucci jafiorucci@gmail.com

References

Fioruci, J.A., Ehlers, R.S., Andrade Filho, M.G. Bayesian multivariate GARCH models with dynamic correlations and asymmetric error distributions, Journal of Applied Statistics, 41(2), 320–331, 2014a, doi:10.1080/02664763.2013.839635.

Fioruci, J.A., Ehlers, R.S., Louzada, F. BayesDccGarch - An Implementation of Multivariate GARCH DCC Models, ArXiv e-prints, 2014b. https://ui.adsabs.harvard.edu/abs/2014arXiv1412.2967F/abstract

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Version

Install

install.packages('bayesDccGarch')

Monthly Downloads

231

Version

3.0.4

License

GPL (>= 2)

Maintainer

Jose Augusto Fiorucci

Last Published

April 22nd, 2023

Functions in bayesDccGarch (3.0.4)

plotVol

Plotting volatilities of time series
DaxCacNik

Log-returns of daily indices of stock markets in Frankfurt, Paris and Tokio
predict.bayesDccGarch

Bayesian forecast for volatilities and coditional correlations
densityFunctions

Density functions of multivariate Standard Skew Norm, t-Student and GED distributions
logLikDccGarch

The logarithm of likelihood function of DCC-GARCH(1,1) Model.
bayesDccGarch-package

bayesDccGARCH: Methods and tools for Bayesian analysis of DCC-GARCH(1,1) Model.
plot.bayesDccGarch

Plotting volatilities for Bayesian DCC-GARCH model
bayesDccGarch

Bayesian Estimation of the DCC-GARCH(1,1) Model.