tvVAR: Time-varying Vector Autoregressive Models

tvVARR Documentation

Time-varying Vector Autoregressive Models

Description

Fits a time-varying coefficients vector autorregressive model with p lags.

Usage

tvVAR(
  y,
  p = 1,
  z = NULL,
  ez = NULL,
  bw = NULL,
  cv.block = 0,
  type = c("const", "none"),
  exogen = NULL,
  est = c("lc", "ll"),
  tkernel = c("Triweight", "Epa", "Gaussian"),
  singular.ok = TRUE
)

Arguments

y

A matrix with dimention obs x neq (obs = number of observations and neq = number of equations)

p

A scalar indicating the number of lags in the model

z

A vector containing the smoothing variable.

ez

(optional) A scalar or vector with the smoothing values. If values are not included then the vector z is used instead.

bw

An optional scalar or vector of length the number of equations. It represents the bandwidth in the estimation of trend coefficients. If NULL, it is selected by cross validation.

cv.block

A positive scalar with the size of the block in leave one block out cross-validation. By default 'cv.block = 0' meaning leave one out cross-validation.

type

A character 'const' if the model contains an intercept and 'none' otherwise.

exogen

A matrix or data.frame with the exogenous variables (optional)

est

The nonparametric estimation method, one of "lc" (default) for linear constant or "ll" for local linear.

tkernel

A character, either "Triweight" (default), "Epa" or "Gaussian" kernel function.

singular.ok

Logical. If FALSE, a singular model is an error.

Value

An object of class 'tvvar' The object of class tvvar have the following components:

coefficients

An array of dimension obs x neq (obs = number of observations, neq = number of equations in the system) with the time-varying coefficients estimates.

fitted

The fitted values.

residuals

Estimation residuals.

x

A list with the regressors data and the dependent variable.

y

A matrix with the dependent variable data.

z

A vector with the smoothing variable.

ez

A vector with the smoothing estimation values.

bw

Bandwidth of mean estimation.

type

Whether the model has a constant or not.

exogen

A matrix or data.frame with other exogenous variables.

p

Number of lags

neq

Number of equations

obs

Number of observations in estimation.

totobs

Number of observations in the original set.

call

Matched call.

References

Casas, I., Ferreira, E., and Orbe, S. (2017) Time-Varying Coefficient Estimation in SURE Models: Application to Portfolio Management. Available at SSRN: https://ssrn.com/abstract=3043137

Primiceri, G.E. (2005) Time varying structural vector autoregressions and monetary policy. Review of Economic Studies, 72, 821-852.

See Also

bw, tvIRF, plot, print and summary

Examples

##Inflation rate, unemployment rate and treasury bill interest rate for 
##the US, as used in Primiceri (2005).
data(usmacro, package = "bvarsv")
VAR.fit <- vars::VAR(usmacro, p = 6, type = "const")
tvVAR.fit <- tvVAR(usmacro, p = 6, type = "const", bw = c(1.8, 20, 20))
plot(tvVAR.fit)


tvReg documentation built on Sept. 1, 2023, 5:07 p.m.