View source: R/plotRGL_mgcv_smooth_MD.R
plotRGL.mgcv.smooth.MD | R Documentation |
This method plots an interactive 3D representation of a 2-dimensional slice of a multi-dimensional smooth effect, using the rgl package.
## S3 method for class 'mgcv.smooth.MD'
plotRGL(
x,
fix,
se = TRUE,
n = 40,
residuals = FALSE,
type = "auto",
maxpo = 1000,
too.far = c(0, NA),
xlab = NULL,
ylab = NULL,
main = NULL,
xlim = NULL,
ylim = NULL,
se.mult = 1,
trans = identity,
seWithMean = FALSE,
unconditional = FALSE,
...
)
x |
a smooth effect object, extracted using sm. |
fix |
a named vector indicating which variables must be kept fixed and to what values. When plotting a smooth in (d+2) dimensions, then d variables must be fixed. |
se |
when TRUE (default) upper and lower surfaces are added to the plot at |
n |
sqrt of the number of grid points used to compute the effect plot. |
residuals |
if TRUE, then the partial residuals will be added. |
type |
the type of residuals that should be plotted. See residuals.gamViz. |
maxpo |
maximum number of residuals points that will be plotted.
If number of datapoints > |
too.far |
a numeric vector with two entries. The first has the same interpretation
as in plot.mgcv.smooth.2D and it avoids plotting the smooth effect
in areas that are too far form any observation. The distance will be calculated only
using the variables which are not in |
xlab |
if supplied then this will be used as the x label of the plot. |
ylab |
if supplied then this will be used as the y label of the plot. |
main |
used as title for the plot if supplied. |
xlim |
if supplied then this pair of numbers are used as the x limits for the plot. |
ylim |
if supplied then this pair of numbers are used as the y limits for the plot. |
se.mult |
a positive number which will be the multiplier of the standard errors when calculating standard error surfaces. |
trans |
monotonic function to apply to the smooth and residuals, before plotting. Monotonicity is not checked. |
seWithMean |
if TRUE the component smooths are shown with confidence intervals that include the uncertainty about the overall mean. If FALSE then the uncertainty relates purely to the centred smooth itself. Marra and Wood (2012) suggests that TRUE results in better coverage performance, and this is also suggested by simulation. |
unconditional |
if |
... |
currently unused. |
Returns NULL
invisibly.
Marra, G and S.N. Wood (2012) Coverage Properties of Confidence Intervals for Generalized Additive Model Components. Scandinavian Journal of Statistics.
# Example 1: taken from ?mgcv::te, shows how tensor pruduct deals nicely with
# badly scaled covariates (range of x 5% of range of z )
library(mgcViz)
n <- 1e3
x <- rnorm(n); y <- rnorm(n); z <- rnorm(n)
ob <- (x-z)^2 + (y-z)^2 + rnorm(n)
b <- gam(ob ~ s(x, y, z))
v <- getViz(b)
plotRGL(sm(v, 1), fix = c("z" = 0))
# Need to load rgl at this point
## Not run:
library(rgl)
rgl.close() # Close
plotRGL(sm(v, 1), fix = c("z" = 1), residuals = TRUE)
# We can still work on the plot, for instance change the aspect ratio
aspect3d(1, 2, 1)
rgl.close() # Close
## End(Not run)
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