Approximation Methods for a Class of Non-Lipschitz Mathematical Programs with Equilibrium Constraints

IF 1.5 3区 数学 Q2 MATHEMATICS, APPLIED Journal of Optimization Theory and Applications Pub Date : 2024-07-01 DOI:10.1007/s10957-024-02475-6
Lei Guo, Gaoxi Li
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Abstract

We consider how to solve a class of non-Lipschitz mathematical programs with equilibrium constraints (MPEC) where the objective function involves a non-Lipschitz sparsity-inducing function and other functions are smooth. Solving the non-Lipschitz MPEC is highly challenging since the standard constraint qualifications fail due to the existence of equilibrium constraints and the subdifferential of the objective function is unbounded due to the existence of the non-Lipschitz function. On the one hand, for tackling the non-Lipschitzness of the objective function, we introduce a novel class of locally Lipschitz approximation functions that consolidate and unify a diverse range of existing smoothing techniques for the non-Lipschitz function. On the other hand, we use the Kanzow and Schwartz regularization scheme to approximate the equilibrium constraints since this regularization can preserve certain perpendicular structure as in equilibrium constraints, which can induce better convergence results. Then an approximation method is proposed for solving the non-Lipschitz MPEC and its convergence is established under weak conditions. In contrast with existing results, the proposed method can converge to a better stationary point under weaker qualification conditions. Finally, a computational study on the sparse solutions of linear complementarity problems is presented. The numerical results demonstrate the effectiveness of the proposed method.

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具有均衡约束条件的一类非 Lipschitz 数学程序的近似方法
我们考虑了如何求解一类具有均衡约束的非 Lipschitz 数学程序(MPEC),在这类程序中,目标函数涉及非 Lipschitz 稀疏诱导函数,而其他函数是平滑的。求解非 Lipschitz MPEC 极具挑战性,因为平衡约束的存在会导致标准约束条件失效,而非 Lipschitz 函数的存在又会导致目标函数的子差分无界。一方面,为了解决目标函数的非 Lipschitz 性问题,我们引入了一类新的局部 Lipschitz 近似函数,整合并统一了现有的各种非 Lipschitz 函数平滑技术。另一方面,我们使用 Kanzow 和 Schwartz 正则化方案来逼近平衡约束,因为这种正则化可以保留平衡约束中的某些垂直结构,从而获得更好的收敛结果。然后提出了一种求解非 Lipschitz MPEC 的近似方法,并确定了其在弱条件下的收敛性。与现有结果相比,所提出的方法能在较弱的限定条件下收敛到更好的静止点。最后,介绍了线性互补问题稀疏解的计算研究。数值结果证明了所提方法的有效性。
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来源期刊
CiteScore
3.30
自引率
5.30%
发文量
149
审稿时长
9.9 months
期刊介绍: The Journal of Optimization Theory and Applications is devoted to the publication of carefully selected regular papers, invited papers, survey papers, technical notes, book notices, and forums that cover mathematical optimization techniques and their applications to science and engineering. Typical theoretical areas include linear, nonlinear, mathematical, and dynamic programming. Among the areas of application covered are mathematical economics, mathematical physics and biology, and aerospace, chemical, civil, electrical, and mechanical engineering.
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