Pathwise coordinate optimization

Jerome H. Friedman(Stanford University), Trevor Hastie(Stanford University), Holger Höfling(Stanford University), Robert Tibshirani(Stanford University)
The Annals of Applied Statistics
December 1, 2007
Cited by 1,939Open Access
Full Text

Abstract

We consider “one-at-a-time” coordinate-wise descent algorithms for a class of convex optimization problems. An algorithm of this kind has been proposed for the L1-penalized regression (lasso) in the literature, but it seems to have been largely ignored. Indeed, it seems that coordinate-wise algorithms are not often used in convex optimization. We show that this algorithm is very competitive with the well-known LARS (or homotopy) procedure in large lasso problems, and that it can be applied to related methods such as the garotte and elastic net. It turns out that coordinate-wise descent does not work in the “fused lasso,” however, so we derive a generalized algorithm that yields the solution in much less time that a standard convex optimizer. Finally, we generalize the procedure to the two-dimensional fused lasso, and demonstrate its performance on some image smoothing problems.


Related Papers

No related papers found

Powered by citation graph analysis