Here is a revised snippet that seems to work the way that was intended. Apologies to anyone who wasted time looking at the original post. Of course my interest in simpler or more efficient solutions remains unabated.
if (exists("fqssnames")) { mff <- m mff$formula <- Terms ffqss <- paste(fqssnames, collapse = "+") mff$formula <- as.formula(paste(deparse(mff$formula), "+", ffqss)) } m$formula <- Terms m <- eval(m, parent.frame()) mff <- eval(mff, parent.frame()) Y <- model.extract(m, "response") X <- model.matrix(Terms, m) ef <- environment(formula) qss <- function(x, lambda) (x^lambda - 1)/lambda if (length(qssterms) > 0) { xss <- lapply(tmpc$vars, function(u) eval(parse(text = u), mff)) for(i in 1:length(xss)){ X <- cbind(X, xss[[i]]) # Here is the problem } } > On Sep 21, 2020, at 9:52 AM, Koenker, Roger W <rkoen...@illinois.edu> wrote: > > I need some help with a formula processing problem that arose from a > seemingly innocuous request > that I add a “subset” argument to the additive modeling function “rqss” in my > quantreg package. > > I’ve tried to boil the relevant code down to something simpler as illustrated > below. The formulae in > question involve terms called “qss” that construct sparse matrix objects, but > I’ve replaced all that with > a much simpler BoxCox construction that I hope illustrates the basic > difficulty. What is supposed to happen > is that xss objects are evaluated and cbind’d to the design matrix, subject > to the same subset restriction > as the rest of the model frame. However, this doesn’t happen, instead the > xss vectors are evaluated > on the full sample and the cbind operation generates a warning which probably > should be an error. > I’ve inserted a browser() to make it easy to verify that the length of > xss[[[1]] doesn’t match dim(X). > > Any suggestions would be most welcome, including other simplifications of the > code. Note that > the function untangle.specials() is adapted, or perhaps I should say adopted > form the survival > package so you would need the quantreg package to run the attached code. > > Thanks, > Roger > > > > fit <- function(formula, subset, data, ...){ > call <- match.call() > m <- match.call(expand.dots = FALSE) > tmp <- c("", "formula", "subset", "data") > m <- m[match(tmp, names(m), nomatch = 0)] > m[[1]] <- as.name("model.frame") > Terms <- if(missing(data)) terms(formula,special = "qss") > else terms(formula, special = "qss", data = data) > qssterms <- attr(Terms, "specials")$qss > if (length(qssterms)) { > tmpc <- untangle.specials(Terms, "qss") > dropx <- tmpc$terms > if (length(dropx)) > Terms <- Terms[-dropx] > attr(Terms, "specials") <- tmpc$vars > fnames <- function(x) { > fy <- all.names(x[[2]]) > if (fy[1] == "cbind") > fy <- fy[-1] > fy > } > fqssnames <- unlist(lapply(parse(text = tmpc$vars), fnames)) > qssnames <- unlist(lapply(parse(text = tmpc$vars), function(x) > deparse(x[[2]]))) > } > if (exists("fqssnames")) { > ffqss <- paste(fqssnames, collapse = "+") > ff <- as.formula(paste(deparse(formula), "+", ffqss)) > } > m$formula <- Terms > m <- eval(m, parent.frame()) > Y <- model.extract(m, "response") > X <- model.matrix(Terms, m) > ef <- environment(formula) > qss <- function(x, lambda) (x^lambda - 1)/lambda > if (length(qssterms) > 0) { > xss <- lapply(tmpc$vars, function(u) eval(parse(text = u), m, enclos = > ef)) > for(i in 1:length(xss)){ > X <- cbind(X, xss[[i]]) # Here is the problem > } > } > browser() > z <- lm.fit(X,Y) # The dreaded least squares fit > z > } > # Test case > n <- 200 > x <- sort(rchisq(n,4)) > z <- rnorm(n) > s <- sample(1:n, n/2) > y <- log(x) + rnorm(n)/5 > D = data.frame(y = y, x = x, z = z, s = (1:n) %in% s) > plot(x, y) > lam = 0.2 > #f0 <- fit(y ~ qss(x,lambda = lam) + z, subset = s) > f1 <- fit(y ~ qss(x, lambda = lam) + z, subset = s, data = D) > ______________________________________________ > R-help@r-project.org mailing list -- To UNSUBSCRIBE and more, see > https://stat.ethz.ch/mailman/listinfo/r-help > PLEASE do read the posting guide http://www.R-project.org/posting-guide.html > and provide commented, minimal, self-contained, reproducible code. ______________________________________________ R-help@r-project.org mailing list -- To UNSUBSCRIBE and more, see https://stat.ethz.ch/mailman/listinfo/r-help PLEASE do read the posting guide http://www.R-project.org/posting-guide.html and provide commented, minimal, self-contained, reproducible code.