estimate.BSVARMIX {bsvars} | R Documentation |
Bayesian estimation of a Structural Vector Autoregression with shocks following a finite mixture of normal components via Gibbs sampler
Description
Estimates the SVAR with non-normal residuals following a finite M
mixture of normal distributions proposed by Woźniak & Droumaguet (2022).
Implements the Gibbs sampler proposed by Waggoner & Zha (2003)
for the structural matrix B
and the equation-by-equation sampler by Chan, Koop, & Yu (2024)
for the autoregressive slope parameters A
. Additionally, the parameter matrices A
and B
follow a Minnesota prior and generalised-normal prior distributions respectively with the matrix-specific
overall shrinkage parameters estimated thanks to a hierarchical prior distribution. The finite mixture of normals
model is estimated using the prior distributions and algorithms proposed by Woźniak & Droumaguet (2024),
Lütkepohl & Woźniak (2020), and Song & Woźniak (2021). See section Details for the model equations.
Usage
## S3 method for class 'BSVARMIX'
estimate(specification, S, thin = 1, show_progress = TRUE)
Arguments
specification |
an object of class BSVARMIX generated using the |
S |
a positive integer, the number of posterior draws to be generated |
thin |
a positive integer, specifying the frequency of MCMC output thinning |
show_progress |
a logical value, if |
Details
The heteroskedastic SVAR model is given by the reduced form equation:
Y = AX + E
where Y
is an NxT
matrix of dependent variables, X
is a KxT
matrix of explanatory variables,
E
is an NxT
matrix of reduced form error terms, and A
is an NxK
matrix of autoregressive slope coefficients and parameters on deterministic terms in X
.
The structural equation is given by
BE = U
where U
is an NxT
matrix of structural form error terms, and
B
is an NxN
matrix of contemporaneous relationships.
Finally, the structural shocks, U
, are temporally and contemporaneously independent and finite-mixture of normals distributed with zero mean.
The conditional variance of the n
th shock at time t
is given by:
Var_{t-1}[u_{n.t}] = s^2_{n.s_t}
where s_t
is a the regime indicator of
the regime-specific conditional variances of structural shocks s^2_{n.s_t}
.
In this model, the variances of each of the structural shocks sum to M
.
The regime indicator s_t
is either such that:
the regime probabilities are non-zero which requires all regimes to have a positive number occurrences over the sample period, or
sparse with potentially many regimes with zero occurrences over the sample period and in which the number of regimes is estimated.
These model selection also with this respect is made using function specify_bsvar_mix
.
Value
An object of class PosteriorBSVARMIX containing the Bayesian estimation output and containing two elements:
posterior
a list with a collection of S
draws from the posterior distribution generated via Gibbs sampler containing:
- A
an
NxKxS
array with the posterior draws for matrixA
- B
an
NxNxS
array with the posterior draws for matrixB
- hyper
a
5xS
matrix with the posterior draws for the hyper-parameters of the hierarchical prior distribution- sigma2
an
NxMxS
array with the posterior draws for the structural shocks conditional variances- PR_TR
an
MxMxS
array with the posterior draws for the transition matrix.- xi
an
MxTxS
array with the posterior draws for the regime allocation matrix.- pi_0
an
MxS
matrix with the posterior draws for the ergodic probabilities- sigma
an
NxTxS
array with the posterior draws for the structural shocks conditional standard deviations' series over the sample period
last_draw
an object of class BSVARMIX with the last draw of the current MCMC run as the starting value to be passed to the continuation of the MCMC estimation using estimate()
.
Author(s)
Tomasz Woźniak wozniak.tom@pm.me
References
Chan, J.C.C., Koop, G, and Yu, X. (2024) Large Order-Invariant Bayesian VARs with Stochastic Volatility. Journal of Business & Economic Statistics, 42, doi:10.1080/07350015.2023.2252039.
Lütkepohl, H., and Woźniak, T., (2020) Bayesian Inference for Structural Vector Autoregressions Identified by Markov-Switching Heteroskedasticity. Journal of Economic Dynamics and Control 113, 103862, doi:10.1016/j.jedc.2020.103862.
Song, Y., and Woźniak, T., (2021) Markov Switching. Oxford Research Encyclopedia of Economics and Finance, Oxford University Press, doi:10.1093/acrefore/9780190625979.013.174.
Waggoner, D.F., and Zha, T., (2003) A Gibbs sampler for structural vector autoregressions. Journal of Economic Dynamics and Control, 28, 349–366, doi:10.1016/S0165-1889(02)00168-9.
Woźniak, T., and Droumaguet, M., (2024) Bayesian Assessment of Identifying Restrictions for Heteroskedastic Structural VARs
See Also
specify_bsvar_mix
, specify_posterior_bsvar_mix
, normalise_posterior
Examples
# simple workflow
############################################################
# upload data
data(us_fiscal_lsuw)
# specify the model and set seed
specification = specify_bsvar_mix$new(us_fiscal_lsuw, p = 1, M = 2)
set.seed(123)
# run the burn-in
burn_in = estimate(specification, 5)
# estimate the model
posterior = estimate(burn_in, 10, thin = 2)
# workflow with the pipe |>
############################################################
set.seed(123)
us_fiscal_lsuw |>
specify_bsvar_mix$new(p = 1, M = 2) |>
estimate(S = 5) |>
estimate(S = 10, thin = 2) |>
compute_impulse_responses(horizon = 4) -> irf