This function is a constructor for the corSpatial class,
  representing a spatial correlation structure. This class is "virtual",
  having four "real" classes, corresponding to specific spatial
  correlation structures, associated with it: corExp,
  corGaus, corLin, corRatio, and
  corSpher. The returned object will inherit from one of these
  "real" classes, determined by the type argument, and from the
  "virtual" corSpatial class. Objects created using this
  constructor must later be initialized using the appropriate
  Initialize method.
corSpatial(value, form, nugget, type, metric, fixed)an optional vector with the parameter values in
   constrained form. If nugget is FALSE, value can
   have only one element, corresponding to the "range" of the
   spatial correlation structure, which must be greater than
   zero. If nugget is TRUE, meaning that a nugget effect
   is present, value can contain one or two elements, the first
   being the "range" and the second the "nugget effect" (one minus the
   correlation between two observations taken arbitrarily close
   together); the first must be greater than zero and the second must be
   between zero and one. Defaults to numeric(0), which results in
   a range of 90% of the minimum distance and a nugget effect of 0.1
   being assigned to the parameters when object is initialized.
a one sided formula of the form ~ S1+...+Sp, or
   ~ S1+...+Sp | g, specifying spatial covariates S1
   through Sp and,  optionally, a grouping factor g. 
   When a grouping factor is present in form, the correlation
   structure is assumed to apply only to observations within the same
   grouping level; observations with different grouping levels are
   assumed to be uncorrelated. Defaults to ~ 1, which corresponds
   to using the order of the observations in the data as a covariate,
   and no groups.
an optional logical value indicating whether a nugget
   effect is present. Defaults to FALSE.
an optional character string specifying the desired type of
   correlation structure. Available types include "spherical",
   "exponential", "gaussian", "linear", and
   "rational". See the documentation on the functions
   corSpher, corExp, corGaus, corLin, and
   corRatio for a description of these correlation
   structures. Partial matching of arguments is used, so only the first
   character needs to be provided.Defaults to "spherical".
an optional character string specifying the distance
   metric to be used. The currently available options are
   "euclidean" for the root sum-of-squares of distances;
   "maximum" for the maximum difference; and "manhattan"
   for the sum of the absolute differences. Partial matching of
   arguments is used, so only the first three characters need to be
   provided. Defaults to "euclidean".
an optional logical value indicating whether the
   coefficients should be allowed to vary in the optimization, or kept
   fixed at their initial value. Defaults to FALSE, in which case
   the coefficients are allowed to vary.
an object of class determined by the type argument and also
  inheriting from class corSpatial, representing a spatial
  correlation structure.
Cressie, N.A.C. (1993), "Statistics for Spatial Data", J. Wiley & Sons.
Venables, W.N. and Ripley, B.D. (2002) "Modern Applied Statistics with S", 4th Edition, Springer-Verlag.
Littel, Milliken, Stroup, and Wolfinger (1996) "SAS Systems for Mixed Models", SAS Institute.
corExp,
  corGaus,
  corLin,
  corRatio,
  corSpher,
  Initialize.corStruct,
  summary.corStruct,
  dist
# NOT RUN {
sp1 <- corSpatial(form = ~ x + y + z, type = "g", metric = "man")
# }
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