2000 character limit reached
Recursive $\ell_{1,\infty}$ Group lasso (1101.5734v1)
Published 29 Jan 2011 in stat.ME and stat.ML
Abstract: We introduce a recursive adaptive group lasso algorithm for real-time penalized least squares prediction that produces a time sequence of optimal sparse predictor coefficient vectors. At each time index the proposed algorithm computes an exact update of the optimal $\ell_{1,\infty}$-penalized recursive least squares (RLS) predictor. Each update minimizes a convex but nondifferentiable function optimization problem. We develop an online homotopy method to reduce the computational complexity. Numerical simulations demonstrate that the proposed algorithm outperforms the $\ell_1$ regularized RLS algorithm for a group sparse system identification problem and has lower implementation complexity than direct group lasso solvers.
- Yilun Chen (48 papers)
- Alfred O. Hero III (89 papers)