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Probabilistic Multi-Task Feature Selection
2010
Neural Information Processing Systems
Recently, some variants of the 1 norm, particularly matrix norms such as the 1,2 and 1,∞ norms, have been widely used in multi-task learning, compressed sensing and other related areas to enforce sparsity via joint regularization. In this paper, we unify the 1,2 and 1,∞ norms by considering a family of 1, norms for 1 < ≤ ∞ and study the problem of determining the most appropriate sparsity enforcing norm to use in the context of multi-task feature selection. Using the generalized normal
dblp:conf/nips/ZhangYX10
fatcat:a2mnpzsysjcxfg2kjb2ht75rpe