rvinecopulib-package |
High Performance Algorithms for Vine Copula Modeling |
bicop |
Bivariate copula models |
bicop_dist |
Bivariate copula models |
bicop_distributions |
Bivariate copula distributions |
bicop_predict_and_fitted |
Predictions and fitted values for a bivariate copula model |
check_rvine_matrix |
R-vine matrices |
contour.bicop |
Plotting tools for 'bicop_dist' and 'bicop' objects |
contour.bicop_dist |
Plotting tools for 'bicop_dist' and 'bicop' objects |
contour.vinecop |
Plotting 'vinecop_dist' and 'vinecop' objects. |
contour.vinecop_dist |
Plotting 'vinecop_dist' and 'vinecop' objects. |
dbicop |
Bivariate copula distributions |
dbicop_dist |
Bivariate copula distributions |
dvinecop |
Vine copula distributions |
dvinecop_dist |
Vine copula distributions |
fitted.bicop |
Predictions and fitted values for a bivariate copula model |
fitted.vinecop |
Predictions and fitted values for a vine copula model |
hbicop |
Bivariate copula distributions |
hbicop_dist |
Bivariate copula distributions |
mBICV |
calculates the vine copula Bayesian information criterion (vBIC), which is defined as \mathrm{BIC} = -2\, \mathrm{loglik} + nu \ln(n), - 2 * sum_{t=1}^(d - 1) \{q_t log(psi_0^t) - (d - t - q_t) log(1 - psi_0^t)\} where \mathrm{loglik} is the log-liklihood and nu is the (effective) number of parameters of the model, t is the tree level psi_0 is the prior probability of having a non-independence copula and q_t is the number of non-independence copulas in tree t. The vBIC is a consistent model selection criterion for parametric sparse vine copula models. |
par_to_tau |
Conversion between Kendall's tau and parameters |
pbicop |
Bivariate copula distributions |
pbicop_dist |
Bivariate copula distributions |
plot.bicop |
Plotting tools for 'bicop_dist' and 'bicop' objects |
plot.bicop_dist |
Plotting tools for 'bicop_dist' and 'bicop' objects |
plot.vinecop |
Plotting 'vinecop_dist' and 'vinecop' objects. |
plot.vinecop_dist |
Plotting 'vinecop_dist' and 'vinecop' objects. |
predict.bicop |
Predictions and fitted values for a bivariate copula model |
predict.vinecop |
Predictions and fitted values for a vine copula model |
pvinecop |
Vine copula distributions |
pvinecop_dist |
Vine copula distributions |
rbicop |
Bivariate copula distributions |
rbicop_dist |
Bivariate copula distributions |
rvinecop |
Vine copula distributions |
rvinecopulib |
High Performance Algorithms for Vine Copula Modeling |
rvinecop_dist |
Vine copula distributions |
tau_to_par |
Conversion between Kendall's tau and parameters |
vinecop |
Vine copula models |
vinecop_dist |
Vine copula models |
vinecop_distributions |
Vine copula distributions |
vinecop_predict_and_fitted |
Predictions and fitted values for a vine copula model |