A:Of class "matrix", A, which are the
    linear `coefficients' of the matrix of latent variables.
    It is \(M\) by \(R\).
 
    B1:Of class "matrix", B1.
    These correspond to terms of the argument noRRR.
 
    C:Of class "matrix", C, the
    canonical coefficients. It has \(R\) columns.
 
    Constrained:Logical. Whether the model is
    a constrained ordination model.
 
    D:Of class "array",
    D[,,j] is an order-Rank matrix, for
    j = 1,…,\(M\).
    Ideally, these are negative-definite in order to make the response
    curves/surfaces bell-shaped.
 
    Rank:The rank (dimension, number of latent variables)
    of the RR-VGLM. Called \(R\).
 
    latvar:\(n\) by \(R\) matrix
          of latent variable values.
 
    latvar.order:Of class "matrix", the permutation
          returned when the function
          order is applied to each column of latvar.
          This enables each column of latvar to be easily sorted.
 
    Maximum:Of class "numeric", the
          \(M\) maximum fitted values. That is, the fitted values
          at the optimums for noRRR = ~ 1 models.
    If noRRR is not ~ 1 then these will be NAs.
 
    NOS:Number of species.
 
    Optimum:Of class "matrix", the values
          of the latent variables where the optimums are.
          If the curves are not bell-shaped, then the value will
          be NA or NaN.
 
    Optimum.order:Of class "matrix", the permutation
          returned when the function
          order is applied to each column of Optimum.
          This enables each row of Optimum to be easily sorted.
 
%   \item{\code{Diagonal}:}{Vector of logicals: are the
%         \code{D[,,j]} diagonal? }
    bellshaped:Vector of logicals: is each
          response curve/surface bell-shaped?
 
    dispersion:Dispersion parameter(s).
 
    Dzero:Vector of logicals, is each of the
          response curves linear in the latent variable(s)?
          It will be if and only if
          D[,,j] equals O, for
          j = 1,…,\(M\) .
 
    Tolerance:Object of class "array",
          Tolerance[,,j] is an order-Rank matrix, for
          j = 1,…,\(M\), being the matrix of
          tolerances (squared if on the diagonal).
          These are denoted by T in Yee (2004).
    Ideally, these are positive-definite in order to make the response
    curves/surfaces bell-shaped.
The tolerance matrices satisfy
\(T_s = -\frac12 D_s^{-1}\).