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Algorithm for cardinality-constrained quadratic optimization

机译:基数约束二次优化算法

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This paper describes an algorithm for cardinality-constrained quadratic optimization problems, which are convex quadratic programming problems with a limit on the number of non-zeros in the optimal solution. In particular, we consider problems of subset selection in regression and portfolio selection in asset management and propose branch-and-bound based algorithms that take advantage of the special structure of these problems. We compare our tailored methods against CPLEX’s quadratic mixed-integer solver and conclude that the proposed algorithms have practical advantages for the special class of problems we consider.
机译:本文介绍了一种用于基数约束的二次优化问题的算法,该二次优化问题是凸二次规划问题,其最优解中的非零数受到限制。特别是,我们考虑了资产管理中的子集选择和资产管理中的投资组合选择问题,并提出了基于分支定界的算法来利用这些问题的特殊结构。我们将我们量身定制的方法与CPLEX的二次混合整数求解器进行了比较,得出的结论是,所提出的算法对于我们考虑的特殊问题类别具有实际优势。

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