View source: R/plottingBayes.R
spatial2D | R Documentation |
Produces a pca plot with spatial variation in localisation probabilities
spatial2D(
object,
dims = c(1, 2),
cov.function = fields::wendland.cov,
theta = 1,
derivative = 2,
k = 1,
breaks = c(0.99, 0.95, 0.9, 0.85, 0.8, 0.75, 0.7),
aspect = 0.5
)
object |
A valid object of class |
dims |
The PCA dimension in which to project he data, default is
|
cov.function |
The covariance function used default is
wendland.cov. See |
theta |
A hyperparameter to the covariance function. See |
derivative |
The number of derivative of the wendland kernel. See
|
k |
A hyperparamter to the covariance function. See |
breaks |
Probability values at which to draw the contour bands. Default
is |
aspect |
A argument to change the plotting aspect of the PCA |
Used for side effect of producing plot. Invisibily returns an ggplot object that can be further manipulated
Oliver M. Crook <omc25@cam.ac.uk>
## Not run:
library("pRolocdata")
data("tan2009r1")
tanres <- tagmMcmcTrain(object = tan2009r1)
tanres <- tagmMcmcProcess(tanres)
tan2009r1 <- tagmMcmcPredict(object = tan2009r1, params = tanres, probJoint = TRUE)
spatial2D(object = tan2009r1)
## End(Not run)
Add the following code to your website.
For more information on customizing the embed code, read Embedding Snippets.