suffstat | R Documentation |
The canonical sufficient statistic of a point process model is evaluated for a given point pattern.
suffstat(model, X=data.ppm(model))
model |
A fitted point process model (object of class
|
X |
A point pattern (object of class |
The canonical sufficient statistic
of model
is evaluated for the point pattern X
.
This computation is useful for various Monte Carlo methods.
Here model
should be a point process model (object of class
"ppm"
, see ppm.object
), typically obtained
from the model-fitting function ppm
. The argument
X
should be a point pattern (object of class "ppp"
).
Every point process model fitted by ppm
has
a probability density of the form
f(x) = Z(theta) exp(theta * S(x))
where x denotes a typical realisation (i.e. a point pattern), theta is the vector of model coefficients, Z(theta) is a normalising constant, and S(x) is a function of the realisation x, called the “canonical sufficient statistic” of the model.
For example, the stationary Poisson process has canonical sufficient statistic S(x)=n(x), the number of points in x. The stationary Strauss process with interaction range r (and fitted with no edge correction) has canonical sufficient statistic S(x)=(n(x),s(x)) where s(x) is the number of pairs of points in x which are closer than a distance r to each other.
suffstat(model, X)
returns the value of S(x), where S is
the canonical sufficient statistic associated with model
,
evaluated when x is the given point pattern X
.
The result is a numeric vector, with entries which correspond to the
entries of the coefficient vector coef(model)
.
The sufficient statistic S
does not depend on the fitted coefficients
of the model. However it does depend on the irregular parameters
which are fixed in the original call to ppm
, for
example, the interaction range r
of the Strauss process.
The sufficient statistic also depends on the edge correction that was used to fit the model. For example in a Strauss process,
If the model is fitted with correction="none"
, the sufficient
statistic is S(x) = (n(x), s(x)) where n(x) is the
number of points and s(x) is the number of pairs of points
which are closer than r units apart.
If the model is fitted with correction="periodic"
, the sufficient
statistic is the same as above, except that distances are measured
in the periodic sense.
If the model is fitted with
correction="translate"
, then n(x) is unchanged
but s(x) is replaced by a weighted sum (the sum of the translation
correction weights for all pairs of points which are closer than
r units apart).
If the model is fitted with
correction="border"
(the default), then points lying less than
r units from the boundary of the observation window are
treated as fixed. Thus n(x) is
replaced by the number n[r](x)
of points lying at least r units from
the boundary of the observation window, and s(x) is replaced by
the number s[r](x) of pairs of points, which are closer
than r units apart, and at least one of which lies
more than r units from the boundary of the observation window.
Non-finite values of the sufficient statistic (NA
or
-Inf
) may be returned if the point pattern X
is
not a possible realisation of the model (i.e. if X
has zero
probability of occurring under model
for all values of
the canonical coefficients theta).
A numeric vector of sufficient statistics. The entries
correspond to the model coefficients coef(model)
.
.
ppm
fitS <- ppm(swedishpines~1, Strauss(7)) suffstat(fitS) X <- rpoispp(intensity(swedishpines), win=Window(swedishpines)) suffstat(fitS, X)
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