spatstat (version 1.25-2)

profilepl: Profile Maximum Pseudolikelihood

Description

Fits point process models by profile maximum pseudolikelihood

Usage

profilepl(s, f, ..., rbord = NULL, verbose = TRUE)

Arguments

s
Data frame containing values of the irregular parameters over which the profile pseudolikelihood will be computed.
f
Function (such as Strauss) that generates an interpoint interaction object, given values of the irregular parameters.
...
Data passed to ppm to fit the model.
rbord
Radius for border correction (same for all models). If omitted, this will be computed from the interactions.
verbose
Logical flag indicating whether to print progress reports.

Value

  • An object of class "profilepl". There are methods for plot and print for this class.

    The components of the object include

  • fitBest-fitting model
  • paramThe data frame s
  • ioptRow index of the best-fitting parameters in s

Details

The model-fitting function ppm fits point process models to point pattern data. However, only the regular parameters of the model can be fitted by ppm. The model may also depend on irregular parameters that must be fixed in any call to ppm.

This function profilepl is a wrapper which finds the values of the irregular parameters that give the best fit. It uses the method of maximum profile pseudolikelihood. The argument s must be a data frame whose columns contain values of the irregular parameters over which the maximisation is to be performed.

An irregular parameter may affect either the interpoint interaction or the spatial trend. [object Object],[object Object] The argument f determines the interaction for each model to be fitted. It would typically be one of the functions Poisson, AreaInter, BadGey, DiggleGatesStibbard, DiggleGratton, Fiksel, Geyer, Hardcore, LennardJones, OrdThresh, Softcore, Strauss or StraussHard. Alternatively it could be a function written by the user.

Columns of s which match the names of arguments of f will be interpreted as interaction parameters. Other columns will be interpreted as trend parameters.

To apply the method of profile maximum pseudolikelihood, each row of s will be taken in turn. Interaction parameters in this row will be passed to f, resulting in an interaction object. Then ppm will be applied to the data ... using this interaction. Any trend parameters will be passed to ppm through the argument covfunargs. This results in a fitted point process model. The value of the log pseudolikelihood from this model is stored. After all rows of s have been processed in this way, the row giving the maximum value of log pseudolikelihood will be found.

The object returned by profilepl contains the profile pseudolikelihood function, the best fitting model, and other data. It can be plotted (yielding a plot of the log pseudolikelihood values against the irregular parameters) or printed (yielding information about the best fitting values of the irregular parameters). In general, f may be any function that will return an interaction object (object of class "interact") that can be used in a call to ppm. Each argument of f must be a single value.

Examples

Run this code
data(cells)

    # one irregular parameter
    s <- data.frame(r=seq(0.05,0.15, by=0.01))
    <testonly>s <- data.frame(r=c(0.05,0.1,0.15))</testonly>
    ps <- profilepl(s, Strauss, cells)
    ps
    if(interactive()) plot(ps)

    # two irregular parameters
    s <- expand.grid(r=seq(0.05,0.15, by=0.01),sat=1:3)
    <testonly>s <- expand.grid(r=c(0.05,0.1,0.15),sat=1:2)</testonly>
    pg <- profilepl(s, Geyer, cells)
    pg
    if(interactive()) plot(pg)
    pg$fit

    # multitype pattern with a common interaction radius
    data(betacells)
    s <- data.frame(R=seq(65,85,by=5))
    <testonly>s <- data.frame(R=seq(65,85,by=10))</testonly>
    MS <- function(R) { MultiStrauss(radii=diag(c(R,R))) }
    pm <- profilepl(s, MS, betacells, ~marks)

Run the code above in your browser using DataCamp Workspace