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Complexity of Unconstrained L_2-L_p Minimization

Abstract

We consider the unconstrained L2L_2-LpL_p minimization: find a minimizer of Axb22+λxpp\|Ax-b\|^2_2+\lambda \|x\|^p_p for given ARm×nA \in R^{m\times n}, bRmb\in R^m and parameters λ>0\lambda>0, p[0,1)p\in [0,1). This problem has been studied extensively in variable selection and sparse least squares fitting for high dimensional data. Theoretical results show that the minimizers of the L2L_2-LpL_p problem have various attractive features due to the concavity and non-Lipschitzian property of the regularization function pp\|\cdot\|^p_p. In this paper, we show that the LqL_q-LpL_p minimization problem is strongly NP-hard for any p[0,1)p\in [0,1) and q1q\ge 1, including its smoothed version. On the other hand, we show that, by choosing parameters (p,λ)(p,\lambda) carefully, a minimizer, global or local, will have certain desired sparsity. We believe that these results provide new theoretical insights to the studies and applications of the concave regularized optimization problems.

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