k-Support and Ordered Weighted Sparsity for Overlapping Groups: Hardness and Algorithms
–Neural Information Processing Systems
The k-support and OWL norms generalize the l1 norm, providing better prediction accuracy and better handling of correlated variables. We study the norms obtained from extending the k-support norm and OWL norms to the setting in which there are overlapping groups. The resulting norms are in general NP-hard to compute, but they are tractable for certain collections of groups. To demonstrate this fact, we develop a dynamic program for the problem of projecting onto the set of vectors supported by a fixed number of groups.
Neural Information Processing Systems
Mar-17-2026, 12:31:06 GMT
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