Smooth.msr | R Documentation |
Apply kernel smoothing to a signed measure or vector-valued measure.
## S3 method for class 'msr' Smooth(X, ..., drop=TRUE)
X |
Object of class |
... |
Arguments passed to |
drop |
Logical. If |
This function applies kernel smoothing to a signed measure or
vector-valued measure X
. The Gaussian kernel is used.
The object X
would typically have been created by
residuals.ppm
or msr
.
A pixel image or a list of pixel images.
For scalar-valued measures, a pixel image (object of class
"im"
) provided drop=TRUE
.
For vector-valued measures (or if drop=FALSE
),
a list of pixel images; the list also
belongs to the class "solist"
so that it can be printed and plotted.
Baddeley, A., Turner, R., \Moller, J. and Hazelton, M. (2005) Residual analysis for spatial point processes. Journal of the Royal Statistical Society, Series B 67, 617–666.
Baddeley, A., \Moller, J. and Pakes, A.G. (2008) Properties of residuals for spatial point processes. Annals of the Institute of Statistical Mathematics 60, 627–649.
Smooth
,
msr
,
plot.msr
X <- rpoispp(function(x,y) { exp(3+3*x) }) fit <- ppm(X, ~x+y) rp <- residuals(fit, type="pearson") rs <- residuals(fit, type="score") plot(Smooth(rp)) plot(Smooth(rs))
Add the following code to your website.
For more information on customizing the embed code, read Embedding Snippets.