Scikit-learn allows sample weights to be provided to linear, logistic, and ridge regressions (among others), but not to elastic net or lasso regressions. By sample weights, I mean each element of the input to fit on (and the corresponding output) is of varying importance, and should have an effect on the estimated coefficients proportional to its weight.

Is there a way I can manipulate my data before passing it to ElasticNet.fit() to incorporate my sample weights?

If not, is there a fundamental reason it is not possible?


  • This code is presented by someone at Stanford, who works with Trevor Hastie (one of the main authors of elastic net). It does support weights and it's Python. If you take a look at this vignette, at the first equation, I think that you can see how to manipulate the data to inject weights in your scikit-learn package. Just make sure that the average weight of each weight is 1 so that any preset limits to the grid of of lambda values remain OK. – Mike O'Connor Jul 5 at 12:04
  • I should have said that you can see how to apply weighting on your own by inspecting the first two equations of the vignette. – Mike O'Connor Jul 6 at 6:47

You can read some discussion about this in sklearn's issue-tracker.

It basically reads like:

  • not that hard to do (theory-wise)
  • pain keeping all the basic sklearn'APIs and supporting all possible cases (dense vs. sparse)

As you can see in this thread and the linked one about adaptive lasso, there is not much activity there (probably because not many people care and the related paper is not popular enough; but that's only a guess).

Depending on your exact task (size? sparseness?), you could build your own optimizer quite easily based on scipy.optimize, supporting this kind of sample-weights (which will be a bit slower, but robust and precise)!

  • Exactly what I was looking for, thank you. – Albeit Oct 3 '17 at 14:35
  • Hi, assuming that I want to use lasso or elasticNet with a dense matrix, would there be anything wrong in scaling the values input matrices by the square of the sample weights? (The same way it is done when you map a weighted-OLS problem into a standard OLS). – HerrIvan Mar 26 at 8:57

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