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?

Thanks!