I am trying to do fixed effects with R. My data looks like this
dte, yr, id, v1, v2 and has daily date values. I would like to include dummy variables for
id and for
dte is the date. If i try to use
plm and specify the index as
index=c("id, "yr") and do a
within model with any sort of
effects I get the error that
(yr, id) is not unique, which is true since my data is daily.
I then decided to simply do this by making
yr a factor and using
lm(v1 ~ factor(yr) + v2 - 1, data=df)
However, this seems to run out of memory. I have 20 levels in my factor and
df is 14 mil rows which takes about 2 gigs to store, I am running this on a machine with 22 gigs dedicated to this process. I then decided to try things the old fashioned way: create dummy variables for each of my years
t20 by doing:
df$t1 <- 1*(df$yr==1) df$t2 <- 1*(df$yr==2) df$t3 <- 1*(df$yr==3)
and simply compute:
solve(t(x) %*% x) %*% t(x) %*% y
This runs without a problem and produces the answer almost right away. What is it in the
lm function that is making this regression impossible to run and requires so much memory?
EDIT: I am specifically curious what is it about lm that makes it run out of memory when I can compute the coefficients just fine?