When class(x)[1] = ftsm
, plot showing the principal components in the top row of plots and the coefficients in the bottom row of plots.
When class(x)[1] = fm
, plot showing the predictor scores in the top row of plots and the response loadings in the bottom row of plots.
# S3 method for fm
plot(x, order, xlab1 = x$y$xname, ylab1 = "Principal component",
xlab2 = "Time", ylab2 = "Coefficient", mean.lab = "Mean",
level.lab = "Level", main.title = "Main effects", interaction.title
= "Interaction", basiscol = 1, coeffcol = 1, outlier.col = 2,
outlier.pch = 19, outlier.cex = 0.5, ...)
Function produces a plot.
Output from ftsm
or fplsr
.
Number of principal components to plot. Default is all principal components in a model.
x-axis label for principal components.
x-axis label for coefficient time series.
y-axis label for principal components.
y-axis label for coefficient time series.
Label for mean component.
Label for level component.
Title for main effects.
Title for interaction terms.
Colors for principal components if plot.type = "components"
.
Colors for time series coefficients if plot.type = "components"
.
Colors for outlying years.
Plotting character for outlying years.
Size of plotting character for outlying years.
Plotting parameters.
Rob J Hyndman
R. J. Hyndman and M. S. Ullah (2007) "Robust forecasting of mortality and fertility rates: A functional data approach", Computational Statistics and Data Analysis, 51(10), 4942-4956.
R. J. Hyndman and H. Booth (2008) "Stochastic population forecasts using functional data models for mortality, fertility and migration", International Journal of Forecasting, 24(3), 323-342.
R. J. Hyndman and H. L. Shang (2009) "Forecasting functional time series (with discussion)", Journal of the Korean Statistical Society, 38(3), 199-221.
ftsm
, forecast.ftsm
, residuals.fm
, summary.fm
, plot.fmres
, plot.ftsf
plot(x = ftsm(y = ElNino_ERSST_region_1and2))
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