Fit a single mean or largest class model. nullmodel()
is the underlying
computational function for the null_model()
specification.
Arguments
- x
An optional matrix or data frame of predictors. These values are not used in the model fit
- ...
Optional arguments (not yet used)
- y
A numeric vector (for regression) or factor (for classification) of outcomes
- object
An object of class
nullmodel
- new_data
A matrix or data frame of predictors (only used to determine the number of predictions to return)
- type
Either "raw" (for regression), "class" or "prob" (for classification)
Value
The output of nullmodel()
is a list of class nullmodel
with elements
- call
the function call
- value
the mean of
y
or the most prevalent class- levels
when
y
is a factor, a vector of levels.NULL
otherwise- pct
when
y
is a factor, a data frame with a column for each class (NULL
otherwise). The column for the most prevalent class has the proportion of the training samples with that class (the other columns are zero).- n
the number of elements in
y
predict.nullmodel()
returns either a factor or numeric vector
depending on the class of y
. All predictions are always the same.
Details
nullmodel()
emulates other model building functions, but returns the
simplest model possible given a training set: a single mean for numeric
outcomes and the most prevalent class for factor outcomes. When class
probabilities are requested, the percentage of the training set samples with
the most prevalent class is returned.