Compute the trend or intensity of a fitted point process model as a function of one of its covariates.
effectfun(model, covname, …, se.fit=FALSE)
A fitted point process model (object of class
"ppm"
, "kppm"
, "lppm"
, "dppm"
, "rppm"
or "profilepl"
).
The name of the covariate. A character string. (Needed only if the model has more than one covariate.)
The fixed values of other covariates (in the form
name=value
) if required.
Logical. If TRUE
, asymptotic standard errors of the estimates
will be computed, together with a 95% confidence interval.
A data frame containing a column of values of the covariate and a column
of values of the fitted trend.
If se.fit=TRUE
, there are 3 additional columns containing the
standard error and the upper and lower limits of a confidence interval.
If the covariate named covname
is numeric (rather than a factor
or logical variable), the return value is
also of class "fv"
so that it can be plotted immediately.
For a Poisson point process model, the trend is the same as the
intensity of the point process. For a more general Gibbs model, the trend
is the first order potential in the model (the first order term in the
Gibbs representation). In Poisson or Gibbs models fitted by
ppm
, the trend is the only part of the model that
depends on the covariates.
The function dppm
which fits
a determinantal point process model allows the user to specify the
intensity lambda
. In such cases the effect function is
undefined, and effectfun
stops with an error message.
The object model
should be an object of class
"ppm"
, "kppm"
, "lppm"
, "dppm"
, "rppm"
or "profilepl"
representing a point process model fitted to point pattern data.
The model's trend formula should involve a spatial covariate
named covname
. This could be "x"
or "y"
representing one of the Cartesian coordinates.
More commonly the covariate
is another, external variable that was supplied when fitting the model.
The command effectfun
computes the fitted trend
of the point process model
as a function of the covariate
named covname
.
The return value can be plotted immediately, giving a
plot of the fitted trend against the value of the covariate.
If the model also involves covariates other than covname
,
then these covariates will be held fixed. Values for
these other covariates must be provided as arguments
to effectfun
in the form name=value
.
If se.fit=TRUE
, the algorithm also calculates
the asymptotic standard error of the fitted trend,
and a (pointwise) asymptotic 95% confidence interval for the
true trend.
This command is just a wrapper for the prediction method
predict.ppm
. For more complicated computations
about the fitted intensity, use predict.ppm
.
# NOT RUN {
X <- copper$SouthPoints
D <- distfun(copper$SouthLines)
fit <- ppm(X ~ polynom(D, 5))
effectfun(fit)
plot(effectfun(fit, se.fit=TRUE))
fitx <- ppm(X ~ x + polynom(D, 5))
plot(effectfun(fitx, "D", x=20))
# }
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