The object can be a fitted model of any kind,
  including models of the classes lm, glm
  and ppm.
To be precise,
  object must belong to a class for which there are methods
  for formula, terms
  and model.matrix.
  
The command model.depends determines the relationship between
  the original covariates (the data supplied when object was
  fitted) and the canonical covariates (the columns of the design matrix).
  It returns a logical matrix, with one row for each canonical
  covariate, and one column for each of the original covariates,
  with the i,j entry equal to TRUE if the
  ith canonical covariate depends on the jth
  original covariate.
If the model formula of object includes offset terms
  (see offset), then the return value of model.depends
  also has an attribute "offset". This is a logical value or
  matrix with one row for each offset term and one column for each of
  the original covariates, with the i,j entry equal to TRUE if the
  ith offset term depends on the jth
  original covariate.
The command model.covariates returns a character vector
  containing the names of all (original) covariates that were actually
  used to fit the model. By default, this includes all covariates that
  appear in the model formula, including offset terms as well as 
  canonical covariate terms. To omit the offset terms, set
  offset=FALSE. To omit the canonical covariate terms,
  set fitted=FALSE.
The command model.is.additive determines whether the model
  is additive, in the sense that there is no canonical covariate that
  depends on two or more original covariates. It returns a logical value.
The command has.offset.term is a faster way to determine whether the
  model formula includes an offset term.
The functions model.depends and has.offset.term
  only detect offset terms which are present
  in the model formula. They do not detect numerical offsets in the
  model object, that were inserted using the offset argument
  in lm, glm etc. To detect the presence of offsets
  of both kinds, use has.offset.