Objects can be created by calls of the form new("StatModel", ...).
Slots
name:
Object of class "character", the name of the
model.
dpp:
Object of class "function", a function for
data preprocessing (usually formula-based).
fit:
Object of class "function", a function for
fitting the model to data.
predict:
Object of class "function", a function for
computing predictions.
capabilities:
Object of class
"StatModelCapabilities".
Methods
fit
signature(model = "StatModel", data = "ModelEnv"):
fit model to data.
Details
This is an attempt to provide unified infra-structure for unfitted
statistical models. Basically, an unfitted model provides a function for
data pre-processing (dpp, think of generating design matrices),
a function for fitting the specified model to data (fit), and
a function for computing predictions (predict).
Examples for such unfitted models are provided by linearModel and
glinearModel which provide interfaces in the "StatModel" framework
to lm.fit and glm.fit, respectively. The functions
return objects of S3 class "linearModel" (inheriting from "lm") and
"glinearModel" (inheriting from "glm"), respectively. Some
methods for S3 generics such as predict, fitted, print
and model.matrix are provided to make use of the "StatModel"
structure. (Similarly, survReg provides an experimental interface to
survreg.)
Examples
### linear model example
df <- data.frame(x = runif(10), y = rnorm(10))
mf <- dpp(linearModel, y ~ x, data = df)
mylm <- fit(linearModel, mf)
### equivalent
print(mylm)
lm(y ~ x, data = df)
### predictions
Predict(mylm, newdata = data.frame(x = runif(10)))