Select a formula-based model by AIC.
step(object, scope, scale = 0,
     direction = c("both", "backward", "forward"),
     trace = 1, keep = NULL, steps = 1000, k = 2, …)an object representing a model of an appropriate class (mainly
    "lm" and "glm").
    This is used as the initial model in the stepwise search.
defines the range of models examined in the stepwise search.
    This should be either a single formula, or a list containing
    components upper and lower, both formulae.  See the
    details for how to specify the formulae and how they are used.
used in the definition of the AIC statistic for selecting the models,
    currently only for lm, aov and
    glm models.  The default value, 0, indicates
    the scale should be estimated: see extractAIC.
the mode of stepwise search, can be one of "both",
    "backward", or "forward", with a default of "both".
    If the scope argument is missing the default for
    direction is "backward".  Values can be abbreviated.
if positive, information is printed during the running of step.
    Larger values may give more detailed information.
a filter function whose input is a fitted model object and the
    associated AIC statistic, and whose output is arbitrary.
    Typically keep will select a subset of the components of
    the object and return them. The default is not to keep anything.
the maximum number of steps to be considered. The default is 1000 (essentially as many as required). It is typically used to stop the process early.
the multiple of the number of degrees of freedom used for the penalty.
    Only k = 2 gives the genuine AIC: k = log(n) is sometimes
    referred to as BIC or SBC.
any additional arguments to extractAIC.
the stepwise-selected model is returned, with up to two additional
  components.  There is an "anova" component corresponding to the
  steps taken in the search, as well as a "keep" component if the
  keep= argument was supplied in the call. The
  "Resid. Dev" column of the analysis of deviance table refers
  to a constant minus twice the maximized log likelihood: it will be a
  deviance only in cases where a saturated model is well-defined
  (thus excluding lm, aov and survreg fits,
  for example).
The model fitting must apply the models to the same dataset. This
  may be a problem if there are missing values and R's default of
  na.action = na.omit is used.  We suggest you remove the
  missing values first.
Calls to the function nobs are used to check that the
  number of observations involved in the fitting process remains unchanged.
step uses add1 and drop1
  repeatedly; it will work for any method for which they work, and that
  is determined by having a valid method for extractAIC.
  When the additive constant can be chosen so that AIC is equal to
  Mallows' \(C_p\), this is done and the tables are labelled
  appropriately.
The set of models searched is determined by the scope argument.
  The right-hand-side of its lower component is always included
  in the model, and right-hand-side of the model is included in the
  upper component.  If scope is a single formula, it
  specifies the upper component, and the lower model is
  empty.  If scope is missing, the initial model is used as the
  upper model.
Models specified by scope can be templates to update
  object as used by update.formula.  So using
  . in a scope formula means ‘what is
  already there’, with .^2 indicating all interactions of
  existing terms.
There is a potential problem in using glm fits with a
  variable scale, as in that case the deviance is not simply
  related to the maximized log-likelihood.  The "glm" method for
  function extractAIC makes the
  appropriate adjustment for a gaussian family, but may need to be
  amended for other cases.  (The binomial and poisson
  families have fixed scale by default and do not correspond
  to a particular maximum-likelihood problem for variable scale.)
Hastie, T. J. and Pregibon, D. (1992) Generalized linear models. Chapter 6 of Statistical Models in S eds J. M. Chambers and T. J. Hastie, Wadsworth & Brooks/Cole.
Venables, W. N. and Ripley, B. D. (2002) Modern Applied Statistics with S. New York: Springer (4th ed).
# NOT RUN {
## following on from example(lm)
utils::example("lm", echo = FALSE)
step(lm.D9)
summary(lm1 <- lm(Fertility ~ ., data = swiss))
slm1 <- step(lm1)
summary(slm1)
slm1$anova
# }
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