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MSBVAR (version 0.2.1)

Bayesian Vector Autoregression Models

Description

Provides methods for estimating frequentist and Bayesian Vector Autoregression (VAR) models. Functions for reduced form and structural VAR models are also available. Includes methods for the generating posterior inferences for VAR forecasts, impulse responses (using likelihood-based error bands), and forecast error decompositions. Also includes utility functions for plotting forecasts and impulse responses, and generating draws from Wishart and singular multivariate normal densities. Future versions will include some models with Markov switching.

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Version

Install

install.packages('MSBVAR')

Monthly Downloads

19

Version

0.2.1

License

GPL version 2 or newer

Maintainer

Patrick Brandt

Last Published

February 15th, 2017

Functions in MSBVAR (0.2.1)

plot.irf

Plots impulse responses
mcmc.szbsvar

Gibbs sampler for coefficients of a B-SVAR model
normalize.svar

Likelihood normalization of SVAR models
IsraelPalestineConflict

Weekly Goldstein Scaled Israeli-Palestinian Conflict Data, 1979-2003
forecast

Generate forecasts for fitted VAR objects
plot.forecast

Plots competing sets of VAR forecasts or a single set of VAR forecasts
hc.forecast

Forecast density estimation of hard condition forecasts for VAR models via MCMC
A02mcmc

Converts A0 objects to coda MCMC objects
cf.forecasts

Compare VAR forecasts to each other or real data
decay.spec

Lag decay specification check
SZ.prior.evaluation

Sims-Zha Bayesian VAR Prior Specification Search
granger.test

Bivariate Granger causality testing
mountains

Mountain plots for summarizing forecast densities
rmse

Root mean squared error of a Monte Carlo / MCMC sample of forecasts
null.space

Find the null space of a matrix
reduced.form.var

Estimation of a reduced form VAR model
restmtx

Utility function for generating the restriction matrix for hard condition forecasting
rwishart

Random deviates from a Wishart distribution
print.dfev

Printing DFEV tables
dfev

Decompositions of Forecast Error Variance (DFEV) for VAR/BVAR/BSVAR models
forc.ecdf

Empirical CDF computations for posterior forecast samples
print.posterior.fit

Print method for posterior fit measures
mae

Mean absolute error of VAR forecasts
var.lag.specification

Automated VAR lag specification testing
plot.forc.ecdf

Plots VAR forecasts and their empirical error bands
posterior.fit

Estimates the marginal likelihood and posterior probability for VAR, BVAR, and BSVAR models
rmultnorm

Multivariate Normal Random Number Generator
plot.mc.irf

Plotting posteriors of Monte Carlo simulated impulse responses
uc.forecast

Forecast density estimation unconditional forecasts for VAR/BVAR/BSVAR models via MCMC
mc.irf

Monte Carlo Integration / Simulation of Impulse Response Functions
szbvar

Reduced form Sims-Zha Bayesian VAR model estimation
szbsvar

Structural Sims-Zha Bayesian VAR model estimation
gibbs.A0

Gibbs sampler for posterior of Bayesian structural vector autoregression models
irf

Impulse Response Function (IRF) Computation for a VAR