I am attempting to run a pooled OLS regression on a panel dataset of about 34,000 observations. When calling lm() in R, this process takes forever and ends up consuming over 30GB of memory (hence, it goes out-of-RAM whilst estimating the regression). In fact, I had to force quit the program as my computer almost crashed.

When I run the exact same regression in Stata (on the same dataset), this process takes roughly 1 second. I do not follow what is going on here, am I doing something wrong?

R Code:

pooled1=lm(ret ~ l_ret + l_btm + l_roe, data=panel)

Stata Code:

reg ret l_ret l_btm l_roe, r

Stata Output

R Memory Usage

Stata Browser

R Browser



  • 1
    Trying to reproduce your problem in R. lm(a ~ b + c, data = data.frame(a = rnorm(34000, 5, 2), b = rnorm(34000, 7, 2), c = c(rep(1, 17000), rep(2, 17000)))) takes less than a second on my computer. Do you manage to produce an example dataset that causes similar issue? – Mikko Nov 11 '17 at 13:23
  • Dear @Mikko, Thank you for answering. Indeed, your reproduction works fine for me in R. Hence, there must clearly be something else going on. Looking at the data browsers for R and Stata, however, the loaded dataset (panel) is displayed identically... (I have updated the post with screenshots of these). – J.G. Nov 11 '17 at 13:31
  • Please paste str() and summary() results of your data.frame. – Mikko Nov 11 '17 at 13:37
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    convert l_ret to numeric and try again – missuse Nov 11 '17 at 13:43
  • Ah of course. Interesting how Stata appears to do this automatically. Thank you @missuse and Mikko ! I will update the post with the solution. – J.G. Nov 11 '17 at 13:48
up vote 0 down vote accepted

Your $l_ret variable is a character vector. Try converting it to a numeric vector Panel$l_ret <- as.numeric(Panel$l_ret), and run your analysis again. Also your data.frame is a tibble object. This should not slow R down, but you might also want to try converting Panel to a data.frame to minimize any interference. You can do this by Panel <- as.data.frame(Panel).

  • Thank you Mikko. I had just assumed that since Stata could run the analysis, the actual dataset configuration would also check out fine. Lesson learnt. – J.G. Nov 11 '17 at 13:56
  • You probably have either a letter string or a number with a comma (0,5 f.ex) among those 34000 numbers. That's why it gets converted to a character vector. – Mikko Nov 12 '17 at 11:54

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