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fable (version 0.3.3)

VAR: Estimate a VAR model

Description

Searches through the vector of lag orders to find the best VAR model which has lowest AIC, AICc or BIC value. It is implemented using OLS per equation.

Usage

VAR(formula, ic = c("aicc", "aic", "bic"), ...)

Value

A model specification.

Arguments

formula

Model specification (see "Specials" section).

ic

The information criterion used in selecting the model.

...

Further arguments for arima

Specials

pdq

The AR special is used to specify the lag order for the auto-regression.


AR(p = 0:5)

pThe order of the auto-regressive (AR) terms. If multiple values are provided, the one which minimises ic will be chosen.

xreg

Exogenous regressors can be included in an VAR model without explicitly using the xreg() special. Common exogenous regressor specials as specified in common_xregs can also be used. These regressors are handled using stats::model.frame(), and so interactions and other functionality behaves similarly to stats::lm().

The inclusion of a constant in the model follows the similar rules to stats::lm(), where including 1 will add a constant and 0 or -1 will remove the constant. If left out, the inclusion of a constant will be determined by minimising ic.


xreg(...)

...Bare expressions for the exogenous regressors (such as log(x))

Details

Exogenous regressors and common_xregs can be specified in the model formula.

See Also

Examples

Run this code

lung_deaths <- cbind(mdeaths, fdeaths) %>%
  as_tsibble(pivot_longer = FALSE)

fit <- lung_deaths %>%
  model(VAR(vars(mdeaths, fdeaths) ~ AR(3)))

report(fit)

fit %>%
  forecast() %>%
  autoplot(lung_deaths)

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