The (stationary)
  Soft Core point process with parameters \(\beta\) and
  \(\sigma\) and exponent \(\kappa\)
  is the pairwise interaction point process in which 
  each point contributes a factor \(\beta\) to the 
  probability density of the point pattern, and each pair of points
  contributes a factor
  $$
    \exp \left\{ - \left( \frac{\sigma}{d} \right)^{2/\kappa} \right\}
  $$
  to the density, where \(d\) is the distance between the two points.
  See the Examples for a plot of this interaction curve.
  
Thus the process has probability density
  $$
    f(x_1,\ldots,x_n) =
    \alpha \beta^{n(x)}
    \exp \left\{ - \sum_{i < j} \left(
                 \frac{\sigma}{||x_i-x_j||}
    \right)^{2/\kappa} \right\}
  $$
  where \(x_1,\ldots,x_n\) represent the 
  points of the pattern, \(n(x)\) is the number of points in the
  pattern, \(\alpha\) is the normalising constant,
  and the sum on the right hand side is
  over all unordered pairs of points of the pattern.
This model describes an ``ordered'' or ``inhibitive'' process,
  with the strength of inhibition decreasing smoothly with distance.
  The interaction is controlled by the parameters \(\sigma\)
  and \(\kappa\).
The spatial scale of interaction is controlled by the
    parameter \(\sigma\), which is a positive real number
    interpreted as a distance, expressed in the same units of distance as
    the spatial data. The parameter \(\sigma\) is the distance at which the
    pair potential reaches the threshold value 0.37.
 
The shape of the interaction function
    is controlled by the exponent
    \(\kappa\) which is a dimensionless number
    in the range \((0,1)\), with larger values corresponding to
    a flatter shape (or a more gradual decay rate).
    The process is well-defined only for \(\kappa\) in
    \((0,1)\).
    The limit of the model as \(\kappa \to 0\) is the
    hard core process with hard core distance \(h=\sigma\).
 
The “strength” of the interaction is determined by both of the
    parameters \(\sigma\) and \(\kappa\).
    The larger the value of \(\kappa\), the wider the range of
    distances over which the interaction has an effect.
    If \(\sigma\) is very small, the interaction is very weak
    for all practical purposes (theoretically if \(\sigma = 0\)
    the model reduces to the Poisson point process).
 
The nonstationary Soft Core process is similar except that 
  the contribution of each individual point \(x_i\)
  is a function \(\beta(x_i)\)
  of location, 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 Soft Core process pairwise interaction is
  yielded by the function Softcore(). See the examples below.
 
The main argument is the exponent  kappa.
  When kappa is fixed, the model becomes an exponential family
  with canonical parameters \(\log \beta\)
  and $$
    \log \gamma = \frac{2}{\kappa} \log\sigma
  $$
  The canonical parameters are estimated by ppm(), not fixed in
  Softcore().
The optional argument sigma0 can be used to improve
  numerical stability. If sigma0 is given, it should be a positive
  number, and it should be a rough estimate of the
  parameter \(\sigma\).