This is a method for the generic function update
  for the class "ppm". An object of class "ppm"
  describes a fitted point process model. See ppm.object)
  for details of this class.  update.ppm will modify the point process model
  specified by object according to the new arguments given,
  then re-fit it.
  The actual re-fitting is performed by the model-fitting
  function ppm.
  If you are comparing several model fits to the same data,
  or fits of the same model to different data, it is
  strongly advisable to use update.ppm
  rather than trying to fit them by hand.
  This is because update.ppm re-fits the model
  in a way which is comparable to the original fit.
  The arguments ... are matched to the formal arguments
  of ppm as follows.
  First, all the named arguments in ... are matched
  with the formal arguments of ppm.
  Use name=NULL to remove the argument name from the
  call.
  Second, any unnamed arguments in ... are
  matched with formal arguments of ppm if the matching
  is obvious from the class of the object. Thus ... may contain
  
- exactly one argument of class"ppp"or"quad",
    which will be interpreted as the named argumentQ;
- exactly one argument of class"formula", which will be
    interpreted as the named argumenttrend(or as specifying
    a change to the trend formula);
- exactly one argument of class"interact", which will be
    interpreted as the named argumentinteraction;
- exactly one argument of class"data.frame", which will be
    interpreted as the named argumentcovariates.
  The trend argument can be a formula that specifies a
  change to the current trend formula. For example, the
  formula ~ . + Z specifies that the additional covariate
  Z will be added to the right hand side of the trend
  formula in the existing object.
  The argument fixdummy=TRUE ensures comparability of the
  objects before and after updating.
  When fixdummy=FALSE, calling update.ppm
  is exactly the same as calling ppm with the updated
  arguments. However, the original and updated models
  are not strictly comparable (for example, their pseudolikelihoods
  are not strictly comparable) unless they used the same set of dummy
  points for the quadrature scheme. Setting fixdummy=TRUE
  ensures that the re-fitting will be performed using the same set
  of dummy points. This is highly recommended.
  The value of use.internal determines where to find data
  to re-evaluate the model (data for the arguments mentioned in
  the original call to ppm that are not overwritten by
  arguments to update.ppm).
  
  If use.internal=FALSE, then arguments 
  to ppm are re-evaluated in the frame where you
  call update.ppm. This is like the behaviour of the
  other methods for update. This means that if you have changed
  any of the objects referred to in the call, these changes will be
  taken into account. Also if the original call to ppm included
  any calls to random number generators, these calls will be recomputed,
  so that you will get a different outcome of the random numbers.
  If use.internal=TRUE, then arguments to ppm are extracted
  from internal data stored inside the current fitted
  model object. This is useful if you don't want to 
  re-evaluate anything. It is also necessary if 
  if object has been restored from a dump file
  using load or source. In such cases,
  we have lost the environment in which object was fitted,
  and data cannot be re-evaluated.
  By default, if use.internal is missing, update.ppm will
  re-evaluate the arguments if this is possible, and use internal data
  if not.