Publication | Open Access
Convex Relaxation for Combinatorial Penalties
39
Citations
19
References
2012
Year
Mathematical ProgrammingGraph SparsityEngineeringMachine LearningSparsity-inducing NormsData SciencePattern RecognitionExtremal CombinatoricsDiscrete MathematicsCombinatorial OptimizationRegularization (Mathematics)Low-rank ApproximationUnifying ViewConvex RelaxationInverse ProblemsComputer ScienceDeep LearningSparse RepresentationLatent Group LassoCombinatory AnalysisConvex Optimization
In this paper, we propose an unifying view of several recently proposed structured sparsity-inducing norms. We consider the situation of a model simultaneously (a) penalized by a set- function de ned on the support of the unknown parameter vector which represents prior knowledge on supports, and (b) regularized in Lp-norm. We show that the natural combinatorial optimization problems obtained may be relaxed into convex optimization problems and introduce a notion, the lower combinatorial envelope of a set-function, that characterizes the tightness of our relaxations. We moreover establish links with norms based on latent representations including the latent group Lasso and block-coding, and with norms obtained from submodular functions.
| Year | Citations | |
|---|---|---|
Page 1
Page 1