A B C D E F G H I K L M P R S V
| AIC.bvarflat | Fitting Bayesian VAR(p) of Flat Prior |
| AIC.bvarmn | Fitting Bayesian VAR(p) of Minnesota Prior |
| AIC.bvharmn | Fitting Bayesian VHAR of Minnesota Prior |
| AIC.varlse | Fitting Vector Autoregressive Model of Order p Model |
| AIC.vharlse | Fitting Vector Heterogeneous Autoregressive Model |
| alpl | Evaluate the Density Forecast Based on Average Log Predictive Likelihood (APLP) |
| alpl.bvharcv | Evaluate the Density Forecast Based on Average Log Predictive Likelihood (APLP) |
| autolayer.predbvhar | Plot Forecast Result |
| autoplot.bvhardynsp | Dynamic Spillover Indices Plot |
| autoplot.bvharirf | Plot Impulse Responses |
| autoplot.bvharsp | Plot the Result of BVAR and BVHAR MCMC |
| autoplot.normaliw | Residual Plot for Minnesota Prior VAR Model |
| autoplot.predbvhar | Plot Forecast Result |
| autoplot.summary.bvharsp | Plot the Heatmap of SSVS Coefficients |
| autoplot.summary.normaliw | Density Plot for Minnesota Prior VAR Model |
| BIC.bvarflat | Fitting Bayesian VAR(p) of Flat Prior |
| BIC.bvarmn | Fitting Bayesian VAR(p) of Minnesota Prior |
| BIC.bvharmn | Fitting Bayesian VHAR of Minnesota Prior |
| BIC.varlse | Fitting Vector Autoregressive Model of Order p Model |
| BIC.vharlse | Fitting Vector Heterogeneous Autoregressive Model |
| bound_bvhar | Setting Empirical Bayes Optimization Bounds |
| bvar_flat | Fitting Bayesian VAR(p) of Flat Prior |
| bvar_minnesota | Fitting Bayesian VAR(p) of Minnesota Prior |
| bvhar_minnesota | Fitting Bayesian VHAR of Minnesota Prior |
| choose_bayes | Finding the Set of Hyperparameters of Bayesian Model |
| choose_bvar | Finding the Set of Hyperparameters of Individual Bayesian Model |
| choose_bvhar | Finding the Set of Hyperparameters of Individual Bayesian Model |
| choose_var | Choose the Best VAR based on Information Criteria |
| coef | Coefficient Matrix of Multivariate Time Series Models |
| coef.bvarflat | Coefficient Matrix of Multivariate Time Series Models |
| coef.bvarmn | Coefficient Matrix of Multivariate Time Series Models |
| coef.bvharmn | Coefficient Matrix of Multivariate Time Series Models |
| coef.bvharsp | Coefficient Matrix of Multivariate Time Series Models |
| coef.summary.bvharsp | Coefficient Matrix of Multivariate Time Series Models |
| coef.varlse | Coefficient Matrix of Multivariate Time Series Models |
| coef.vharlse | Coefficient Matrix of Multivariate Time Series Models |
| compute_dic | Deviance Information Criterion of Multivariate Time Series Model |
| compute_dic.bvarmn | Deviance Information Criterion of Multivariate Time Series Model |
| compute_logml | Extracting Log of Marginal Likelihood |
| compute_logml.bvarmn | Extracting Log of Marginal Likelihood |
| compute_logml.bvharmn | Extracting Log of Marginal Likelihood |
| confusion | Evaluate the Sparsity Estimation Based on Confusion Matrix |
| confusion.summary.bvharsp | Evaluate the Sparsity Estimation Based on Confusion Matrix |
| conf_fdr | Evaluate the Sparsity Estimation Based on FDR |
| conf_fdr.summary.bvharsp | Evaluate the Sparsity Estimation Based on FDR |
| conf_fnr | Evaluate the Sparsity Estimation Based on FNR |
| conf_fnr.summary.bvharsp | Evaluate the Sparsity Estimation Based on FNR |
| conf_fscore | Evaluate the Sparsity Estimation Based on F1 Score |
| conf_fscore.summary.bvharsp | Evaluate the Sparsity Estimation Based on F1 Score |
| conf_prec | Evaluate the Sparsity Estimation Based on Precision |
| conf_prec.summary.bvharsp | Evaluate the Sparsity Estimation Based on Precision |
| conf_recall | Evaluate the Sparsity Estimation Based on Recall |
| conf_recall.summary.bvharsp | Evaluate the Sparsity Estimation Based on Recall |
| divide_ts | Split a Time Series Dataset into Train-Test Set |
| dynamic_spillover | Dynamic Spillover |
| dynamic_spillover.ldltmod | Dynamic Spillover |
| dynamic_spillover.normaliw | Dynamic Spillover |
| dynamic_spillover.olsmod | Dynamic Spillover |
| dynamic_spillover.svmod | Dynamic Spillover |
| etf_vix | CBOE ETF Volatility Index Dataset |
| fitted | Fitted Matrix from Multivariate Time Series Models |
| fitted.bvarflat | Fitted Matrix from Multivariate Time Series Models |
| fitted.bvarmn | Fitted Matrix from Multivariate Time Series Models |
| fitted.bvharmn | Fitted Matrix from Multivariate Time Series Models |
| fitted.varlse | Fitted Matrix from Multivariate Time Series Models |
| fitted.vharlse | Fitted Matrix from Multivariate Time Series Models |
| forecast_expand | Out-of-sample Forecasting based on Expanding Window |
| forecast_expand.ldltmod | Out-of-sample Forecasting based on Expanding Window |
| forecast_expand.normaliw | Out-of-sample Forecasting based on Expanding Window |
| forecast_expand.olsmod | Out-of-sample Forecasting based on Expanding Window |
| forecast_expand.svmod | Out-of-sample Forecasting based on Expanding Window |
| forecast_roll | Out-of-sample Forecasting based on Rolling Window |
| forecast_roll.ldltmod | Out-of-sample Forecasting based on Rolling Window |
| forecast_roll.normaliw | Out-of-sample Forecasting based on Rolling Window |
| forecast_roll.olsmod | Out-of-sample Forecasting based on Rolling Window |
| forecast_roll.svmod | Out-of-sample Forecasting based on Rolling Window |
| FPE | Final Prediction Error Criterion |
| FPE.varlse | Final Prediction Error Criterion |
| FPE.vharlse | Final Prediction Error Criterion |
| fromse | Evaluate the Estimation Based on Frobenius Norm |
| fromse.bvharsp | Evaluate the Estimation Based on Frobenius Norm |
| geom_eval | Adding Test Data Layer |
| gg_loss | Compare Lists of Models |
| HQ | Hannan-Quinn Criterion |
| HQ.bvarflat | Hannan-Quinn Criterion |
| HQ.bvarmn | Hannan-Quinn Criterion |
| HQ.bvharmn | Hannan-Quinn Criterion |
| HQ.logLik | Hannan-Quinn Criterion |
| HQ.varlse | Hannan-Quinn Criterion |
| HQ.vharlse | Hannan-Quinn Criterion |
| irf | Impulse Response Analysis |
| irf.varlse | Impulse Response Analysis |
| irf.vharlse | Impulse Response Analysis |
| is.boundbvharemp | Setting Empirical Bayes Optimization Bounds |
| is.bvarflat | Fitting Bayesian VAR(p) of Flat Prior |
| is.bvarmn | Fitting Bayesian VAR(p) of Minnesota Prior |
| is.bvharcv | Out-of-sample Forecasting based on Rolling Window |
| is.bvharemp | Finding the Set of Hyperparameters of Individual Bayesian Model |
| is.bvharirf | Impulse Response Analysis |
| is.bvharmn | Fitting Bayesian VHAR of Minnesota Prior |
| is.bvharmod | Fitting Vector Autoregressive Model of Order p Model |
| is.bvharpriorspec | Hyperpriors for Bayesian Models |
| is.bvharspec | Hyperparameters for Bayesian Models |
| is.covspec | Covariance Matrix Prior Specification |
| is.dlspec | Dirichlet-Laplace Hyperparameter for Coefficients and Contemporaneous Coefficients |
| is.gdpspec | Generalized Double Pareto Shrinkage Hyperparameters for Coefficients and Contemporaneous Coefficients |
| is.horseshoespec | Horseshoe Prior Specification |
| is.interceptspec | Prior for Constant Term |
| is.ldltspec | Covariance Matrix Prior Specification |
| is.ngspec | Normal-Gamma Hyperparameter for Coefficients and Contemporaneous Coefficients |
| is.predbvhar | Forecasting Multivariate Time Series |
| is.ssvsinput | Stochastic Search Variable Selection (SSVS) Hyperparameter for Coefficients Matrix and Cholesky Factor |
| is.stable | Stability of the process |
| is.stable.bvarflat | Stability of the process |
| is.stable.bvarmn | Stability of the process |
| is.stable.bvharmn | Stability of the process |
| is.stable.varlse | Stability of the process |
| is.stable.vharlse | Stability of the process |
| is.svspec | Covariance Matrix Prior Specification |
| is.varlse | Fitting Vector Autoregressive Model of Order p Model |
| is.vharlse | Fitting Vector Heterogeneous Autoregressive Model |
| knit_print.boundbvharemp | Setting Empirical Bayes Optimization Bounds |
| knit_print.bvarflat | Fitting Bayesian VAR(p) of Flat Prior |
| knit_print.bvarhm | Fitting Bayesian VAR(p) of Minnesota Prior |
| knit_print.bvarldlt | Fitting Bayesian VAR with Coefficient and Covariance Prior |
| knit_print.bvarmn | Fitting Bayesian VAR(p) of Minnesota Prior |
| knit_print.bvarsv | Fitting Bayesian VAR with Coefficient and Covariance Prior |
| knit_print.bvharcv | Out-of-sample Forecasting based on Rolling Window |
| knit_print.bvhardynsp | Dynamic Spillover |
| knit_print.bvharemp | Finding the Set of Hyperparameters of Individual Bayesian Model |
| knit_print.bvharhm | Fitting Bayesian VHAR of Minnesota Prior |
| knit_print.bvharirf | Impulse Response Analysis |
| knit_print.bvharldlt | Fitting Bayesian VHAR with Coefficient and Covariance Prior |
| knit_print.bvharmn | Fitting Bayesian VHAR of Minnesota Prior |
| knit_print.bvharpriorspec | Hyperpriors for Bayesian Models |
| knit_print.bvharspec | Hyperparameters for Bayesian Models |
| knit_print.bvharspillover | h-step ahead Normalized Spillover |
| knit_print.bvharsv | Fitting Bayesian VHAR with Coefficient and Covariance Prior |
| knit_print.horseshoespec | Horseshoe Prior Specification |
| knit_print.interceptspec | Prior for Constant Term |
| knit_print.predbvhar | Forecasting Multivariate Time Series |
| knit_print.ssvsinput | Stochastic Search Variable Selection (SSVS) Hyperparameter for Coefficients Matrix and Cholesky Factor |
| knit_print.summary.bvharsp | Summarizing BVAR and BVHAR with Shrinkage Priors |
| knit_print.summary.normaliw | Summarizing Bayesian Multivariate Time Series Model |
| knit_print.summary.varlse | Summarizing Vector Autoregressive Model |
| knit_print.summary.vharlse | Summarizing Vector HAR Model |
| knit_print.varlse | Fitting Vector Autoregressive Model of Order p Model |
| knit_print.vharlse | Fitting Vector Heterogeneous Autoregressive Model |
| logLik.bvarflat | Fitting Bayesian VAR(p) of Flat Prior |
| logLik.bvarmn | Fitting Bayesian VAR(p) of Minnesota Prior |
| logLik.bvharmn | Fitting Bayesian VHAR of Minnesota Prior |
| logLik.varlse | Fitting Vector Autoregressive Model of Order p Model |
| logLik.vharlse | Fitting Vector Heterogeneous Autoregressive Model |
| mae | Evaluate the Model Based on MAE (Mean Absolute Error) |
| mae.bvharcv | Evaluate the Model Based on MAE (Mean Absolute Error) |
| mae.predbvhar | Evaluate the Model Based on MAE (Mean Absolute Error) |
| mape | Evaluate the Model Based on MAPE (Mean Absolute Percentage Error) |
| mape.bvharcv | Evaluate the Model Based on MAPE (Mean Absolute Percentage Error) |
| mape.predbvhar | Evaluate the Model Based on MAPE (Mean Absolute Percentage Error) |
| mase | Evaluate the Model Based on MASE (Mean Absolute Scaled Error) |
| mase.bvharcv | Evaluate the Model Based on MASE (Mean Absolute Scaled Error) |
| mase.predbvhar | Evaluate the Model Based on MASE (Mean Absolute Scaled Error) |
| mrae | Evaluate the Model Based on MRAE (Mean Relative Absolute Error) |
| mrae.bvharcv | Evaluate the Model Based on MRAE (Mean Relative Absolute Error) |
| mrae.predbvhar | Evaluate the Model Based on MRAE (Mean Relative Absolute Error) |
| mse | Evaluate the Model Based on MSE (Mean Square Error) |
| mse.bvharcv | Evaluate the Model Based on MSE (Mean Square Error) |
| mse.predbvhar | Evaluate the Model Based on MSE (Mean Square Error) |
| predict | Forecasting Multivariate Time Series |
| predict.bvarflat | Forecasting Multivariate Time Series |
| predict.bvarldlt | Forecasting Multivariate Time Series |
| predict.bvarmn | Forecasting Multivariate Time Series |
| predict.bvarsv | Forecasting Multivariate Time Series |
| predict.bvharldlt | Forecasting Multivariate Time Series |
| predict.bvharmn | Forecasting Multivariate Time Series |
| predict.bvharsv | Forecasting Multivariate Time Series |
| predict.varlse | Forecasting Multivariate Time Series |
| predict.vharlse | Forecasting Multivariate Time Series |
| print.boundbvharemp | Setting Empirical Bayes Optimization Bounds |
| print.bvarflat | Fitting Bayesian VAR(p) of Flat Prior |
| print.bvarhm | Fitting Bayesian VAR(p) of Minnesota Prior |
| print.bvarldlt | Fitting Bayesian VAR with Coefficient and Covariance Prior |
| print.bvarmn | Fitting Bayesian VAR(p) of Minnesota Prior |
| print.bvarsv | Fitting Bayesian VAR with Coefficient and Covariance Prior |
| print.bvharcv | Out-of-sample Forecasting based on Rolling Window |
| print.bvhardynsp | Dynamic Spillover |
| print.bvharemp | Finding the Set of Hyperparameters of Individual Bayesian Model |
| print.bvharhm | Fitting Bayesian VHAR of Minnesota Prior |
| print.bvharirf | Impulse Response Analysis |
| print.bvharldlt | Fitting Bayesian VHAR with Coefficient and Covariance Prior |
| print.bvharmn | Fitting Bayesian VHAR of Minnesota Prior |
| print.bvharpriorspec | Hyperpriors for Bayesian Models |
| print.bvharspec | Hyperparameters for Bayesian Models |
| print.bvharspillover | h-step ahead Normalized Spillover |
| print.bvharsv | Fitting Bayesian VHAR with Coefficient and Covariance Prior |
| print.covspec | Covariance Matrix Prior Specification |
| print.dlspec | Dirichlet-Laplace Hyperparameter for Coefficients and Contemporaneous Coefficients |
| print.horseshoespec | Horseshoe Prior Specification |
| print.interceptspec | Prior for Constant Term |
| print.ngspec | Normal-Gamma Hyperparameter for Coefficients and Contemporaneous Coefficients |
| print.predbvhar | Forecasting Multivariate Time Series |
| print.ssvsinput | Stochastic Search Variable Selection (SSVS) Hyperparameter for Coefficients Matrix and Cholesky Factor |
| print.summary.bvharsp | Summarizing BVAR and BVHAR with Shrinkage Priors |
| print.summary.normaliw | Summarizing Bayesian Multivariate Time Series Model |
| print.summary.varlse | Summarizing Vector Autoregressive Model |
| print.summary.vharlse | Summarizing Vector HAR Model |
| print.varlse | Fitting Vector Autoregressive Model of Order p Model |
| print.vharlse | Fitting Vector Heterogeneous Autoregressive Model |
| relmae | Evaluate the Model Based on RelMAE (Relative MAE) |
| relmae.bvharcv | Evaluate the Model Based on RelMAE (Relative MAE) |
| relmae.predbvhar | Evaluate the Model Based on RelMAE (Relative MAE) |
| relspne | Evaluate the Estimation Based on Relative Spectral Norm Error |
| relspne.bvharsp | Evaluate the Estimation Based on Relative Spectral Norm Error |
| residuals | Residual Matrix from Multivariate Time Series Models |
| residuals.bvarflat | Residual Matrix from Multivariate Time Series Models |
| residuals.bvarmn | Residual Matrix from Multivariate Time Series Models |
| residuals.bvharmn | Residual Matrix from Multivariate Time Series Models |
| residuals.varlse | Residual Matrix from Multivariate Time Series Models |
| residuals.vharlse | Residual Matrix from Multivariate Time Series Models |
| rmafe | Evaluate the Model Based on RMAFE |
| rmafe.bvharcv | Evaluate the Model Based on RMAFE |
| rmafe.predbvhar | Evaluate the Model Based on RMAFE |
| rmape | Evaluate the Model Based on RMAPE (Relative MAPE) |
| rmape.bvharcv | Evaluate the Model Based on RMAPE (Relative MAPE) |
| rmape.predbvhar | Evaluate the Model Based on RMAPE (Relative MAPE) |
| rmase | Evaluate the Model Based on RMASE (Relative MASE) |
| rmase.bvharcv | Evaluate the Model Based on RMASE (Relative MASE) |
| rmase.predbvhar | Evaluate the Model Based on RMASE (Relative MASE) |
| rmsfe | Evaluate the Model Based on RMSFE |
| rmsfe.bvharcv | Evaluate the Model Based on RMSFE |
| rmsfe.predbvhar | Evaluate the Model Based on RMSFE |
| set_bvar | Hyperparameters for Bayesian Models |
| set_bvar_flat | Hyperparameters for Bayesian Models |
| set_bvhar | Hyperparameters for Bayesian Models |
| set_dl | Dirichlet-Laplace Hyperparameter for Coefficients and Contemporaneous Coefficients |
| set_gdp | Generalized Double Pareto Shrinkage Hyperparameters for Coefficients and Contemporaneous Coefficients |
| set_horseshoe | Horseshoe Prior Specification |
| set_intercept | Prior for Constant Term |
| set_lambda | Hyperpriors for Bayesian Models |
| set_ldlt | Covariance Matrix Prior Specification |
| set_ng | Normal-Gamma Hyperparameter for Coefficients and Contemporaneous Coefficients |
| set_psi | Hyperpriors for Bayesian Models |
| set_ssvs | Stochastic Search Variable Selection (SSVS) Hyperparameter for Coefficients Matrix and Cholesky Factor |
| set_sv | Covariance Matrix Prior Specification |
| set_weight_bvhar | Hyperparameters for Bayesian Models |
| sim_iw | Generate Inverse-Wishart Random Matrix |
| sim_matgaussian | Generate Matrix Normal Random Matrix |
| sim_mncoef | Generate Minnesota BVAR Parameters |
| sim_mniw | Generate Normal-IW Random Family |
| sim_mnormal | Generate Multivariate Normal Random Vector |
| sim_mnvhar_coef | Generate Minnesota BVAR Parameters |
| sim_mvt | Generate Multivariate t Random Vector |
| sim_var | Generate Multivariate Time Series Process Following VAR(p) |
| sim_vhar | Generate Multivariate Time Series Process Following VAR(p) |
| spillover | h-step ahead Normalized Spillover |
| spillover.bvarldlt | h-step ahead Normalized Spillover |
| spillover.bvharldlt | h-step ahead Normalized Spillover |
| spillover.normaliw | h-step ahead Normalized Spillover |
| spillover.olsmod | h-step ahead Normalized Spillover |
| spne | Evaluate the Estimation Based on Spectral Norm Error |
| spne.bvharsp | Evaluate the Estimation Based on Spectral Norm Error |
| stableroot | Roots of characteristic polynomial |
| stableroot.bvarflat | Roots of characteristic polynomial |
| stableroot.bvarmn | Roots of characteristic polynomial |
| stableroot.bvharmn | Roots of characteristic polynomial |
| stableroot.varlse | Roots of characteristic polynomial |
| stableroot.vharlse | Roots of characteristic polynomial |
| summary.bvharsp | Summarizing BVAR and BVHAR with Shrinkage Priors |
| summary.hsmod | Summarizing BVAR and BVHAR with Shrinkage Priors |
| summary.ngmod | Summarizing BVAR and BVHAR with Shrinkage Priors |
| summary.normaliw | Summarizing Bayesian Multivariate Time Series Model |
| summary.ssvsmod | Summarizing BVAR and BVHAR with Shrinkage Priors |
| summary.varlse | Summarizing Vector Autoregressive Model |
| summary.vharlse | Summarizing Vector HAR Model |
| VARtoVMA | Convert VAR to VMA(infinite) |
| var_bayes | Fitting Bayesian VAR with Coefficient and Covariance Prior |
| var_lm | Fitting Vector Autoregressive Model of Order p Model |
| VHARtoVMA | Convert VHAR to VMA(infinite) |
| vhar_bayes | Fitting Bayesian VHAR with Coefficient and Covariance Prior |
| vhar_lm | Fitting Vector Heterogeneous Autoregressive Model |