View source: R/make_full_rank.R
| make_full_rank | R Documentation |
When writing user-defined methods for use with
weightit(), it may be necessary to take the potentially non-full rank
covs data frame and make it full rank for use in a downstream function.
This function performs that operation.
make_full_rank(mat, with.intercept = TRUE)
mat |
a numeric matrix or data frame to be transformed. Typically this
contains covariates. |
with.intercept |
whether an intercept (i.e., a vector of 1s) should be
added to |
make_full_rank() calls qr() to find the rank and linearly
independent columns of mat, which are retained while others are dropped. If
with.intercept is set to TRUE, an intercept column is added to the matrix
before calling qr(). Note that dependent columns that appear later in mat
will be dropped first.
See example at method_user.
An object of the same type as mat containing only linearly
independent columns.
Older versions would drop all columns that only had one value. With
with.intercept = FALSE, if only one column has only one value, it will not
be removed, and it will function as though there was an intercept present; if
more than only column has only one value, only the first one will remain.
method_user, model.matrix()
set.seed(1000)
c1 <- rbinom(10, 1, .4)
c2 <- 1-c1
c3 <- rnorm(10)
c4 <- 10*c3
mat <- data.frame(c1, c2, c3, c4)
make_full_rank(mat) #leaves c2 and c4
make_full_rank(mat, with.intercept = FALSE) #leaves c1, c2, and c4
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