Heuristics for Finding Sparse Solutions of Linear Inequalities

Yichen Yang, Zhaohui Liu
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Abstract

In this paper, we consider the problem of finding a sparse solution, with a minimal number of nonzero components, for a set of linear inequalities. This optimization problem is combinatorial and arises in various fields such as machine learning and compressed sensing. We present three new heuristics for the problem. The first two are greedy algorithms minimizing the sum of infeasibilities in the primal and dual spaces with different selection rules. The third heuristic is a combination of the greedy heuristic in the dual space and a local search algorithm. In numerical experiments, our proposed heuristics are compared with the weighted-[Formula: see text] algorithm and DCA programming with three different non-convex approximations of the zero norm. The computational results demonstrate the efficiency of our methods.
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寻找线性不等式稀疏解的启发式方法
本文研究了一类线性不等式的非零分量最小的稀疏解问题。这种优化问题是组合的,出现在机器学习和压缩感知等各个领域。我们为这个问题提出了三种新的启发式方法。前两种算法是贪心算法,在不同的选择规则下最小化原空间和对偶空间的不可行和。第三种启发式算法是将对偶空间中的贪婪启发式算法与局部搜索算法相结合。在数值实验中,将我们提出的启发式算法与三种不同的零范数非凸逼近的加权[公式:见文本]算法和DCA规划进行比较。计算结果表明了方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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