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Strong NP-Hardness for Sparse Optimization with Concave Penalty Functions

机译:具有凹罚函数的稀疏优化的强NP硬度

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Consider the regularized sparse minimization problem, which involves empirical sums of loss functions for $n$ data points (each of dimension $d$) and a nonconvex sparsity penalty. We prove that finding an $mathcal{O}(n^{c_1}d^{c_2})$-optimal solution to the regularized sparse optimization problem is strongly NP-hard for any $c_1, c_2in [0,1)$ such that $c_1+c_2<1$. The result applies to a broad class of loss functions and sparse penalty functions. It suggests that one cannot even approximately solve the sparse optimization problem in polynomial time, unless P $=$ NP.
机译:考虑正则化的稀疏最小化问题,该问题涉及$ n $个数据点(每个维为$ d $)的损失函数的经验和以及非凸稀疏性罚分。我们证明,对于任何$ c_1,c_2 in [0,1 )$,这样$ c_1 + c_2 <1 $。结果适用于广泛的损失函数和稀疏罚函数。它表明,除非P $ = $ NP,否则甚至不能近似地解决多项式时间内的稀疏优化问题。

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