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urca (version 1.3-4)

plot-methods: Methods for Function plot in Package urca

Description

Plot methods for objects belonging to classes set in package urca. Depending on the unit root/cointegration test a suitable graphical presentation is selected.

Arguments

Methods

x = "ur.ers", y = "missing"

Diagram of fit of the Elliott, Rothenberg and Stock unit root test of type "DF-GLS" with residual plot and their acfs' and pacfs'.

x = "ur.kpss", y = "missing"

Residual plot and their acfs' and pacfs' of the KPSS test.

x = "ca.jo", y = "missing"

Time series plots and associated cointegration relations for the Johansen procedure.

x = "ca.po", y = "missing"

Residual plot and their acfs' and pacfs' of the cointegration regression(s) for the Phillips and Ouliaris test.

x = "ur.pp", y = "missing"

Diagram of fit of the Phillips and Perron unit root test, residual plot and their acfs' and pacfs'.

x = "ur.sp", y = "missing"

Diagram of fit of the Schmidt and Phillips unit root test, residual plot and their acfs' and pacfs'.

x = "ur.za", y = "missing"

Plot of recursive t-statistics as outcome of Zivot and Andrews unit root test.

Author

Bernhard Pfaff

See Also

ur.ers-class, ur.kpss-class, ca.jo-class, ca.po-class, ur.pp-class, ur.sp-class and ur.za-class.

Examples

Run this code
data(nporg)
gnp <- na.omit(nporg[, "gnp.r"])
gnp.l <- log(gnp)
#
ers.gnp <- ur.ers(gnp, type="DF-GLS", model="trend", lag.max=4)
plot(ers.gnp)
#
kpss.gnp <- ur.kpss(gnp.l, type="tau", lags="short")
plot(kpss.gnp)
#
pp.gnp <- ur.pp(gnp, type="Z-tau", model="trend", lags="short")
plot(pp.gnp)
#
sp.gnp <- ur.sp(gnp, type="tau", pol.deg=1, signif=0.01)
plot(sp.gnp)
#
za.gnp <- ur.za(gnp, model="both", lag=2)
plot(za.gnp)
#
data(denmark)
sjd <- denmark[, c("LRM", "LRY", "IBO", "IDE")]
sjd.vecm <- ca.jo(sjd, ecdet="const", type="eigen", K=2, season=4)
plot(sjd.vecm)

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