
ppm
to represent a fitted stochastic model
for a point process. The output of ppm
.ppm
represents a stochastic point process
model that has been fitted to a point pattern dataset.
Typically it is the output of the model fitter,
ppm
. There are methods print.ppm
,
plot.ppm
, predict.ppm
, fitted.ppm
and coef.ppm
for the generic functions
print
, plot
, predict
,
fitted
and coef
respectively.
See also (for example) Strauss
to understand how to specify
a point process model with unknown parameters.
Information about the data (to which the model was fitted)
can be extracted using data.ppm
, dummy.ppm
and quad.ppm
.
If you really need to get at the internals,
a ppm
object contains at least the following entries:
coef
the fitted regular parameters (as returned by
glm
)
trend
the trend formula or NULL
interaction
the point process interaction family
(an object of class "interact"
)
or NULL
Q
the quadrature scheme used
maxlogpl
the maximised value of log pseudolikelihood
correction
name of edge correction method used
}
See ppm
for explanation of these concepts.
The irregular parameters (e.g. the interaction radius of the
Strauss process) are encoded in the interaction
entry.
However see the Warnings.
ppm
,
coef.ppm
,
fitted.ppm
,
print.ppm
,
predict.ppm
,
plot.ppm
.data(cells)
fit <- ppm(cells, ~ x, Strauss(0.1), correction="periodic")
fit
coef(fit)
pred <- predict(fit)
pred <- predict(fit, ngrid=20, type="trend")
plot(fit)
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