Model Frame/Matrix/Response Construction for Extended Formulas
Computation of model frames, model matrices, and model responses for
extended formulas of class Formula
.
## S3 method for class 'Formula' model.frame(formula, data = NULL, ..., lhs = NULL, rhs = NULL, dot = "separate") ## S3 method for class 'Formula' model.matrix(object, data = environment(object), ..., lhs = NULL, rhs = 1, dot = "separate") ## S3 method for class 'Formula' terms(x, ..., lhs = NULL, rhs = NULL, dot = "separate") model.part(object, ...) ## S3 method for class 'Formula' model.part(object, data, lhs = 0, rhs = 0, drop = FALSE, terms = FALSE, dot = NULL, ...)
formula, object, x |
an object of class |
data |
a data.frame, list or environment containing the variables in
|
lhs, rhs |
indexes specifying which elements of the left- and
right-hand side, respectively, should be employed. |
dot |
character specifying how to process formula parts with a dot
( |
drop |
logical. Should the |
terms |
logical. Should the |
... |
further arguments passed to the respective
|
All three model computations leverage the corresponding standard methods. Additionally, they allow specification of the part(s) of the left- and right-hand side (LHS and RHS) that should be included in the computation.
The idea underlying all three model computations is to extract a suitable
formula
from the more general Formula
and then calling
the standard model.frame
, model.matrix
,
and terms
methods.
More specifically, if the Formula
has multiple parts on the RHS,
they are collapsed, essentially replacing |
by +
. If there
is only a single response on the LHS, then it is kept on the LHS.
Otherwise all parts of the formula are collapsed on the RHS (because formula
objects can not have multiple responses). Hence, for multi-response Formula
objects, the (non-generic) model.response
does
not give the correct results. To avoid confusion a new generic model.part
with suitable formula
method is provided which can always
be used instead of model.response
. Note, however, that it has a different
syntax: It requires the Formula
object in addition to the readily
processed model.frame
supplied in data
(and optionally the lhs
). Also, it returns either a data.frame
with
multiple columns or a single column (dropping the data.frame
property)
depending on whether multiple responses are employed or not.
If the the formula contains one or more dots (.
), some care has to be
taken to process these correctly, especially if the LHS contains transformartions
(such as log
, sqrt
, cbind
, Surv
, etc.). Calling the
terms
method with the original data (untransformed, if any) resolves
all dots (by default separately for each part, otherwise sequentially) and also
includes the original and updated formula as part of the terms. When calling
model.part
either the original untransformed data should be provided
along with a dot
specification or the transformed model.frame
from the same formula without another dot
specification (in which
case the dot
is inferred from the terms
of the model.frame
).
Zeileis A, Croissant Y (2010). Extended Model Formulas in R: Multiple Parts and Multiple Responses. Journal of Statistical Software, 34(1), 1–13. doi: 10.18637/jss.v034.i01
## artificial example data set.seed(1090) dat <- as.data.frame(matrix(round(runif(21), digits = 2), ncol = 7)) colnames(dat) <- c("y1", "y2", "y3", "x1", "x2", "x3", "x4") for(i in c(2, 6:7)) dat[[i]] <- factor(dat[[i]] > 0.5, labels = c("a", "b")) dat$y2[1] <- NA dat ###################################### ## single response and two-part RHS ## ###################################### ## single response with two-part RHS F1 <- Formula(log(y1) ~ x1 + x2 | I(x1^2)) length(F1) ## set up model frame mf1 <- model.frame(F1, data = dat) mf1 ## extract single response model.part(F1, data = mf1, lhs = 1, drop = TRUE) model.response(mf1) ## model.response() works as usual ## extract model matrices model.matrix(F1, data = mf1, rhs = 1) model.matrix(F1, data = mf1, rhs = 2) ######################################### ## multiple responses and multiple RHS ## ######################################### ## set up Formula F2 <- Formula(y1 + y2 | log(y3) ~ x1 + I(x2^2) | 0 + log(x1) | x3 / x4) length(F2) ## set up full model frame mf2 <- model.frame(F2, data = dat) mf2 ## extract responses model.part(F2, data = mf2, lhs = 1) model.part(F2, data = mf2, lhs = 2) ## model.response(mf2) does not give correct results! ## extract model matrices model.matrix(F2, data = mf2, rhs = 1) model.matrix(F2, data = mf2, rhs = 2) model.matrix(F2, data = mf2, rhs = 3) ####################### ## Formulas with '.' ## ####################### ## set up Formula with a single '.' F3 <- Formula(y1 | y2 ~ .) mf3 <- model.frame(F3, data = dat) ## without y1 or y2 model.matrix(F3, data = mf3) ## without y1 but with y2 model.matrix(F3, data = mf3, lhs = 1) ## without y2 but with y1 model.matrix(F3, data = mf3, lhs = 2) ## set up Formula with multiple '.' F3 <- Formula(y1 | y2 | log(y3) ~ . - x3 - x4 | .) ## process both '.' separately (default) mf3 <- model.frame(F3, data = dat, dot = "separate") ## only x1-x2 model.part(F3, data = mf3, rhs = 1) ## all x1-x4 model.part(F3, data = mf3, rhs = 2) ## process the '.' sequentially, i.e., the second RHS conditional on the first mf3 <- model.frame(F3, data = dat, dot = "sequential") ## only x1-x2 model.part(F3, data = mf3, rhs = 1) ## only x3-x4 model.part(F3, data = mf3, rhs = 2) ## process the second '.' using the previous RHS element mf3 <- model.frame(F3, data = dat, dot = "previous") ## only x1-x2 model.part(F3, data = mf3, rhs = 1) ## x1-x2 again model.part(F3, data = mf3, rhs = 2) ############################## ## Process multiple offsets ## ############################## ## set up Formula F4 <- Formula(y1 ~ x3 + offset(x1) | x4 + offset(log(x2))) mf4 <- model.frame(F4, data = dat) ## model.part can be applied as above and includes offset! model.part(F4, data = mf4, rhs = 1) ## additionally, the corresponding corresponding terms can be included model.part(F4, data = mf4, rhs = 1, terms = TRUE) ## hence model.offset() can be applied to extract offsets model.offset(model.part(F4, data = mf4, rhs = 1, terms = TRUE)) model.offset(model.part(F4, data = mf4, rhs = 2, terms = TRUE))
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