Bayesian SVARs with Sign, Zero, and Narrative Restrictions
Computes posterior draws of the forecast error variance decomposition
Bayesian Estimation of Structural Vector Autoregressions Identified by...
Computes posterior draws of structural shocks
Computes posterior draws of structural shock conditional standard devi...
Computes posterior draws from data predictive density
Computes posterior draws of historical decompositions
Computes posterior draws of impulse responses
Bayesian estimation of a Structural Vector Autoregression with traditi...
Forecasting using Structural Vector Autoregression
R6 Class representing the specification of the BSVARSIGN model
R6 Class Representing IdentificationBSVARSIGN
vector specifying one narrative restriction
R6 Class Representing PosteriorBSVARSIGN
R6 Class Representing PriorBSVAR
Implements state-of-the-art algorithms for the Bayesian analysis of Structural Vector Autoregressions (SVARs) identified by sign, zero, and narrative restrictions. The core model is based on a flexible Vector Autoregression with estimated hyper-parameters of the Minnesota prior and the dummy observation priors as in Giannone, Lenza, Primiceri (2015) <doi:10.1162/REST_a_00483>. The sign restrictions are implemented employing the methods proposed by Rubio-Ramírez, Waggoner & Zha (2010) <doi:10.1111/j.1467-937X.2009.00578.x>, while identification through sign and zero restrictions follows the approach developed by Arias, Rubio-Ramírez, & Waggoner (2018) <doi:10.3982/ECTA14468>. Furthermore, our tool provides algorithms for identification via sign and narrative restrictions, in line with the methods introduced by Antolín-Díaz and Rubio-Ramírez (2018) <doi:10.1257/aer.20161852>. Users can also estimate a model with sign, zero, and narrative restrictions imposed at once. The package facilitates predictive and structural analyses using impulse responses, forecast error variance and historical decompositions, forecasting and conditional forecasting, as well as analyses of structural shocks and fitted values. All this is complemented by colourful plots, user-friendly summary functions, and comprehensive documentation. The 'bsvarSIGNs' package is aligned regarding objects, workflows, and code structure with the R package 'bsvars' by Woźniak (2024) <doi:10.32614/CRAN.package.bsvars>, and they constitute an integrated toolset.