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Successive convex approximations to cardinality-constrained convex programs: a piecewise-linear DC approach

机译:基数约束的凸程序的连续凸逼近:分段线性DC方法

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In this paper we consider cardinality-constrained convex programs that minimize a convex function subject to a cardinality constraint and other linear constraints. This class of problems has found many applications, including portfolio selection, subset selection and compressed sensing. We propose a successive convex approximation method for this class of problems in which the cardinality function is first approximated by a piecewise linear DC function (difference of two convex functions) and a sequence of convex subproblems is then constructed by successively linearizing the concave terms of the DC function. Under some mild assumptions, we establish that any accumulation point of the sequence generated by the method is a KKT point of the DC approximation problem. We show that the basic algorithm can be refined by adding strengthening cuts in the subproblems. Finally, we report some preliminary computational results on cardinality-constrained portfolio selection problems.
机译:在本文中,我们考虑了受基数约束的凸程序,该程序使受基数约束和其他线性约束的凸函数最小化。这类问题已经发现了许多应用,包括项目组合选择,子集选择和压缩感测。针对此类问题,我们提出了一种连续凸逼近方法,其中,基数函数首先通过分段线性DC函数(两个凸函数的差)逼近,然后通过对特征向量的凹项进行连续线性化来构造一系列凸子问题。直流功能。在一些温和的假设下,我们确定该方法生成的序列的任何累加点都是直流近似问题的KKT点。我们表明,可以通过在子问题中添加加强切口来完善基本算法。最后,我们报告了一些关于基数受限的投资组合选择问题的初步计算结果。

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