求解对称Pareto特征值互补问题的下降算法

Pub Date : 2023-02-03 DOI:10.21136/AM.2023.0020-22
Lu Zou, Yuan Lei
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引用次数: 0

摘要

对于对称Pareto特征值互补问题,将其转化为可微瑞利商函数上的约束优化问题,给出了一类下降方法,并证明了它们的收敛性。主要特点是:采用非线性互补函数(NCP函数)和瑞利商梯度作为下降方向,采用精确线性搜索确定步长。此外,将这些算法进一步推广到解决单边摩擦弹性系统的广义特征值互补问题(GEiCP)。数值实验表明,与投影最陡下降法相比,所提方法的效率更高,且CPU时间更短。
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The descent algorithms for solving symmetric Pareto eigenvalue complementarity problem

For the symmetric Pareto Eigenvalue Complementarity Problem (EiCP), by reformulating it as a constrained optimization problem on a differentiable Rayleigh quotient function, we present a class of descent methods and prove their convergence. The main features include: using nonlinear complementarity functions (NCP functions) and Rayleigh quotient gradient as the descent direction, and determining the step size with exact linear search. In addition, these algorithms are further extended to solve the Generalized Eigenvalue Complementarity Problem (GEiCP) derived from unilateral friction elastic systems. Numerical experiments show the efficiency of the proposed methods compared to the projected steepest descent method with less CPU time.

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