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首页> 外文期刊>IFAC PapersOnLine >A Novel Approach for Solving Convex Problems with Cardinality Constraints * * Research supported by the European Commission research project FP7-PEOPLE-2013-ITN under grant agreement no. 607957 [Training in Embedded Optimization and Predictive Control (TEMPO)]
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A Novel Approach for Solving Convex Problems with Cardinality Constraints * * Research supported by the European Commission research project FP7-PEOPLE-2013-ITN under grant agreement no. 607957 [Training in Embedded Optimization and Predictive Control (TEMPO)]

机译:解决具有基数约束的凸问题的新方法 * * 欧盟委员会研究计划FP7-PEOPLE-2013-支持的研究ITN根据授权协议编号。 607957 [嵌入式优化和预测控制(TEMPO)培训]

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In this paper we consider the problem of minimizing a convex differentiable function subject to sparsity constraints. Such constraints are non-convex and the resulting optimization problem is known to be hard to solve. We propose a novel generalization of this problem and demonstrate that it is equivalent to the original sparsity-constrained problem if a certain weighting term is sufficiently large. We use the proximal gradient method to solve our generalized problem, and show that under certain regularity assumptions on the objective function the algorithm converges to a local minimum. We further propose an updating heuristic for the weighting parameter, ensuring that the solution produced is locally optimal for the original sparsity constrained problem. Numerical results show that our algorithm outperforms other algorithms proposed in the literature.
机译:在本文中,我们考虑了在稀疏性约束下最小化凸微分函数的问题。这样的约束是非凸的,并且所产生的优化问题已知难以解决。我们提出了这个问题的新颖概括,并证明了如果某个加权项足够大,则它等同于原始的稀疏约束问题。我们使用近端梯度法解决了我们的广义问题,并表明在目标函数的某些规律性假设下,算法收敛到局部最小值。我们进一步提出了加权参数的更新启发法,以确保针对原始稀疏约束问题生成的解在局部最优。数值结果表明,我们的算法优于文献中提出的其他算法。

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