OR duplicate training set columns together
apply_copy_map(X, copy_map)
| X | Sparse matrix containing columns of indicator functions. |
|---|---|
| copy_map | the copy map |
A dgCMatrix sparse matrix corresponding to the design matrix
for a zero-th order highly adaptive lasso, but with all duplicated columns
(basis functions) removed.
# \donttest{ gendata <- function(n) { W1 <- runif(n, -3, 3) W2 <- rnorm(n) W3 <- runif(n) W4 <- rnorm(n) g0 <- plogis(0.5 * (-0.8 * W1 + 0.39 * W2 + 0.08 * W3 - 0.12 * W4)) A <- rbinom(n, 1, g0) Q0 <- plogis(0.15 * (2 * A + 2 * A * W1 + 6 * A * W3 * W4 - 3)) Y <- rbinom(n, 1, Q0) data.frame(A, W1, W2, W3, W4, Y) } set.seed(1234) data <- gendata(100) covars <- setdiff(names(data), "Y") X <- as.matrix(data[, covars, drop = FALSE]) basis_list <- enumerate_basis(X) x_basis <- make_design_matrix(X, basis_list) copy_map <- make_copy_map(x_basis) x_basis_uniq <- apply_copy_map(x_basis, copy_map) # }