I have seen an example of list apply (lapply) that works nicely to take a list of data objects, and return a list of regression output, which we can pass to Stargazer for nicely formatted output. Using stargazer with a list of lm objects created by lapply-ing over a split data.frame
library(MASS) library(stargazer) data(Boston) by.river <- split(Boston, Boston$chas) class(by.river) fit <- lapply(by.river, function(dd)lm(crim ~ indus,data=dd)) stargazer(fit, type = "text")
What i would like to do is, instead of passing a list of datasets to do the same regression on each data set (as above), pass a list of independent variables to do different regressions on the same data set. In long hand it would look like this:
fit2 <- vector(mode = "list", length = 2) fit2[] <- lm(nox ~ indus, data = Boston) fit2[] <- lm(crim ~ indus, data = Boston) stargazer(fit2, type = "text")
with lapply, i tried this and it doesn't work. Where did I go wrong?
myvarc <- c("nox","crim") class(myvarc) myvars <- as.list(myvarc) class(myvars) fit <- lapply(myvars, function(dvar)lm(dvar ~ indus,data=Boston)) stargazer(fit, type = "text")