slrm(formula, ..., data = NULL, offset = TRUE, link = "logit",
                   dataAtPoints=NULL, splitby=NULL)pixellate
    determining the pixel resolution for the discretisation
    of the point pattern.formula, with one row for each
    point in the point pattern dataset."slrm" representing the fitted model.  There are many methods for this class, including methods for
  print, fitted, predict,
  anova, coef, logLik, terms,
  update, formula and vcov.
  Automated stepwise model selection is possible using
  step. Confidence intervals for the parameters can be
  computed using confint.
  The formula specifies the form of the model to be fitted,
  and the data to which it should be fitted. The formula
  must be an Rformula with a left and right hand
  side.
  The left hand side of the formula is the name of the
  point pattern dataset, an object of class "ppp". 
  The right hand side of the formula is an expression,
  in the usual Rformula syntax, representing the functional form of
  the linear predictor for the model.
Each variable name that appears in the formula may be
xandy,
    referring to the Cartesian coordinates;data, if this argument is given;slrmwas issued."im")
    containing the values of a covariate;"owin"), which will be
    interpreted as a logical covariate which isTRUEinside the
    window andFALSEoutside it;functionin theRlanguage, with argumentsx,y, which can be evaluated at any location to
    obtain the values of a covariate.The fitting algorithm discretises the point pattern onto a pixel grid. The value in each pixel is 1 if there are any points of the point pattern in the pixel, and 0 if there are no points in the pixel. The dimensions of the pixel grid will be determined as follows:
...if they are specified (for example the argumentdimyxcan be used to specify the number of pixels).formulaincludes
    the names of any pixel images containing covariate values,
    these images will determine the pixel grid for the discretisation.
    The covariate image with the finest grid (the smallest pixels) will
    be used.spatstat.options("npixel").link="logit" (the default), the algorithm fits a Spatial Logistic
  Regression model. This model states that the probability
  $p$ that a given pixel contains a data point, is related to the
  covariates through
  $$\log\frac{p}{1-p} = \eta$$
  where $\eta$ is the linear predictor of the model
  (a linear combination of the covariates,
  whose form is specified by the formula).  If link="cloglog" then the algorithm fits a model stating that
  $$\log(-\log(1-p)) = \eta$$.
  If offset=TRUE (the default), the model formula will be
  augmented by adding an offset term equal to the logarithm of the pixel
  area. This ensures that the fitted parameters are
  approximately independent of pixel size.
  If offset=FALSE, the offset is not included, and the
  traditional form of Spatial Logistic Regression is fitted.
Baddeley, A., Berman, M., Fisher, N.I., Hardegen, A., Milne, R.K., Schuhmacher, D., Shah, R. and Turner, R. (2010) Spatial logistic regression and change-of-support for spatial Poisson point processes. Electronic Journal of Statistics 4, 1151--1201. {doi: 10.1214/10-EJS581}
Tukey, J.W. (1972) Discussion of paper by F.P. Agterberg and S.C. Robinson. Bulletin of the International Statistical Institute 44 (1) p. 596. Proceedings, 38th Congress, International Statistical Institute.
anova.slrm,
  coef.slrm,
  fitted.slrm,
  logLik.slrm,
  plot.slrm,
  predict.slrm,
  vcov.slrmX <- copper$SouthPoints
     slrm(X ~ 1)
     slrm(X ~ x+y)
     slrm(X ~ x+y, link="cloglog")
     # specify a grid of 1 km square pixels
     slrm(X ~ 1, eps=1)
     Y <- copper$SouthLines
     Z <- distmap(Y)
     slrm(X ~ Z)
     slrm(X ~ Z, dataAtPoints=list(Z=nncross(X,Y)$dist))
     dat <- list(A=X, V=Z)
     slrm(A ~ V, data=dat)Run the code above in your browser using DataLab