# Is there a faster lm function

I would like to get the slope of a linear regression fit for 1M separate data sets (1M * 50 rows for data.frame, or 1M * 50 for array). Now I am using the `lm()` function, which takes a very long time (about 10 min).

Is there any faster function for linear regression?

• You're complaining about ten minutes? Unbelieveable. Parallelize the calculations if the 1M data sets are independent. – duffymo Aug 21 '14 at 0:18
• Just to clarify, are you referring to a dataset of 1M rows or 1M separate datasets? If it's the latter, maybe you should think about the data fishing implications of what you are doing first. – thelatemail Aug 21 '14 at 0:20
• @duffymo Sorry for confusing. My dataset is about 1 M * 54. I already parallel them with 16 cores. I understand 10 min is not a big problem. Just try to find a faster way for linear regression. – Bangyou Aug 21 '14 at 0:22
• @thelatemail It is 1 M separate datasets. – Bangyou Aug 21 '14 at 0:23
• If you are only worried about the slope. It looks like you could calculate it directly using `sd` and `cor`. Check out this post. Slope = r*(sdy/sdx) – pbible Aug 21 '14 at 0:30

Yes there are:

• R itself has `lm.fit()` which is more bare-bones: no formula notation, much simpler result set

• several of our Rcpp-related packages have `fastLm()` implementations: RcppArmadillo, RcppEigen, RcppGSL.

We have described `fastLm()` in a number of blog posts and presentations. If you want it in the fastest way, do not use the formula interface: parsing the formula and preparing the model matrix takes more time than the actual regression.

That said, if you are regressing a single vector on a single vector you can simplify this as no matrix package is needed.

• Thanks for your suggestion. – Bangyou Aug 21 '14 at 0:37
• There is also a `speedglm` package, no idea how much faster (if any) it is, though. – Gabor Csardi Aug 21 '14 at 0:50

Since 3.1.0 there is a `.lm.fit()` function. This function should be faster than `lm()` and `lm.fit()`.

It's described and its performance is compared with different `lm` functions here - https://rpubs.com/maechler/fast_lm. • What if I want to use a model with random effects? Anything fast and able to deal with large datasets? lme4 is very slow and needs a lot of memory. – skan Nov 16 '18 at 19:17

`speedlm` from `speedglm` should do it as it works on large data sets.

lmfit in the package Rfast is even faster than .lm.fit. The only drawback is that it does not work when the design matrix does not have full rank.