HierHard | R Documentation |
Creates an instance of the hierarchical hard core point process model which can then be fitted to point pattern data.
HierHard(hradii=NULL, types=NULL, archy=NULL)
hradii |
Optional matrix of hard core distances |
types |
Optional; vector of all possible types (i.e. the possible levels
of the |
archy |
Optional: the hierarchical order. See Details. |
This is a hierarchical point process model
for a multitype point pattern
(Hogmander and
Sarkka, 1999;
Grabarnik and Sarkka, 2009).
It is appropriate for analysing multitype point pattern data
in which the types are ordered so that
the points of type j
depend on the points of type
1,2,\ldots,j-1
.
The hierarchical version of the (stationary)
hard core process with m
types, with
hard core distances h_{ij}
and
parameters \beta_j
, is a point process
in which each point of type j
contributes a factor \beta_j
to the
probability density of the point pattern.
If any pair of points
of types i
and j
lies closer than h_{ij}
units apart, the configuration of points is impossible (probability
density zero).
The nonstationary hierarchical hard core
process is similar except that
the contribution of each individual point x_i
is a function \beta(x_i)
of location and type, rather than a constant beta.
The function ppm()
,
which fits point process models to
point pattern data, requires an argument
of class "interact"
describing the interpoint interaction
structure of the model to be fitted.
The appropriate description of the hierarchical
hard core process pairwise interaction is
yielded by the function HierHard()
. See the examples below.
The argument types
need not be specified in normal use.
It will be determined automatically from the point pattern data set
to which the HierHard interaction is applied,
when the user calls ppm
.
However, the user should be confident that
the ordering of types in the dataset corresponds to the ordering of
rows and columns in the matrix radii
.
The argument archy
can be used to specify a hierarchical
ordering of the types. It can be either a vector of integers
or a character vector matching the possible types.
The default is the sequence
1,2, \ldots, m
meaning that type j
depends on types 1,2, \ldots, j-1
.
The matrix iradii
must be square, with entries
which are either positive numbers, or zero or NA
.
A value of zero or NA
indicates that no hard core interaction term
should be included for this combination of types.
Note that only the hard core distances are
specified in HierHard
. The canonical
parameters \log(\beta_j)
are estimated by
ppm()
, not fixed in HierHard()
.
An object of class "interact"
describing the interpoint interaction
structure of the hierarchical hard core process with
hard core distances hradii[i,j]
.
, \rolf
and \ege.
Grabarnik, P. and Sarkka, A. (2009) Modelling the spatial structure of forest stands by multivariate point processes with hierarchical interactions. Ecological Modelling 220, 1232–1240.
Hogmander, H. and Sarkka, A. (1999) Multitype spatial point patterns with hierarchical interactions. Biometrics 55, 1051–1058.
MultiHard
for the corresponding
symmetrical interaction.
HierStrauss
,
HierStraussHard
.
h <- matrix(c(4, NA, 10, 15), 2, 2)
HierHard(h)
# prints a sensible description of itself
ppm(ants ~1, HierHard(h))
# fit the stationary hierarchical hard core process to ants data
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