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


by.river <- split(Boston, Boston$chas)

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[[1]] <- lm(nox ~ indus, data = Boston)
fit2[[2]] <- 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")
myvars <- as.list(myvarc)
fit <- lapply(myvars, function(dvar)lm(dvar ~ indus,data=Boston))
stargazer(fit, type = "text")
  • This works, but is not neat (uses column numbers not names, doesn't retain names for headings into stargazer output) fit3 = lapply(Boston[,c(1,5)], function(x)(lm(x ~ Boston$indus))) stargazer(fit3, type = "text") – Mark Neal Feb 7 '17 at 23:52
  • The problem solved below. However the labels don't flow nicely to Stargazer. This code will fix that.stargazer(fit, type = "text", dep.var.labels.include = FALSE, column.labels = myvarc) – Mark Neal Feb 8 '17 at 0:37

This should work:

fit <- lapply(myvars, function(dvar) lm(eval(paste0(dvar,' ~ wt')), data = Boston))
  • While this works as well as Parfait's, Parfait's as.formula makes more sense to read. I suspect though, the use of the more general eval() is more flexible, and could be helpful in some other cases. Cheers, – Mark Neal Feb 8 '17 at 0:36
  • In R, eval(parse...)) though here eval(paste0(...)) is used but same concept holds of evaluating string expressions is generally not recommended for various reasons (i.e., security, consistency). See here and here. – Parfait Feb 8 '17 at 2:43
  • Thanks for the education! Cheers, - – Mark Neal Feb 8 '17 at 4:19
  • Thanks @Parfait for the links – GGamba Feb 8 '17 at 7:09

Consider creating dynamic formulas from string:

fit <- lapply(myvars, function(dvar)
    lm(as.formula(paste0(dvar, " ~ indus")),data=Boston))
  • 1
    Similarly, with reformulate, you could do fit <- lapply(myvars, function(dvar) lm(reformulate("indus", dvar)),data=Boston)). – lmo Feb 8 '17 at 0:44

You can also use a dplyr & purrr approach, keep everything in a tibble, pull out what you want, when you need it. No difference in functionality from the lapply methods.


var_tibble <- tibble(vars = c("nox","crim"), data = list(Boston)) 

 analysis <- var_tibble %>% 
  mutate(models = map2(data, vars, ~lm(as.formula(paste0(.y, " ~ indus")), data = .x))) %>% 
  mutate(tables = map2(models, vars, ~stargazer(.x, type = "text", dep.var.labels.include = FALSE, column.labels = .y)))

You can also use get():

# make a list of independent variables
  list_x <- list("nox","crim")

# create regression function
  my_reg <- function(x) { lm(indus ~ get(x), data = Boston) }

# run regression
  results <- lapply(list_x, my_reg)

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