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A family of NCP functions and a descent method for the nonlinear complementarity problem

机译:非线性互补问题的NCP函数族和下降方法

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In last decades, there has been much effort on the solution and the analysis of the nonlinear complementarity problem (NCP) by reformulating NCP as an unconstrained minimization involving an NCP function. In this paper, we propose a family of new NCP functions, which include the Fischer-Burmeister function as a special case, based on a p-norm with p being any fixed real number in the interval (1,+∞), and show several favorable properties of the proposed functions. In addition, we also propose a descent algorithm that is indeed derivative-free for solving the unconstrained minimization based on the merit functions from the proposed NCP functions. Numerical results for the test problems from MCPLIB indicate that the descent algorithm has better performance when the parameter p decreases in (1,+∞). This implies that the merit functions associated with p∈(1,2), for example p=1.5, are more effective in numerical computations than the Fischer-Burmeister merit function, which exactly corresponds to p=2.
机译:在过去的几十年中,通过将NCP重新构造为涉及NCP函数的无约束最小化,在非线性互补问题(NCP)的解决方案和分析上进行了大量工作。在本文中,我们基于p范数(其中p是区间(1,+∞)中的任何固定实数)提出了一系列新的NCP函数,其中包括Fischer-Burmeister函数作为特例。拟议功能的几个有利性质。此外,我们还提出了一种下降算法,该算法实际上是无导数的,用于基于所提出的NCP函数的优点函数来求解无约束最小化。来自MCPLIB的测试问题的数值结果表明,当参数p减小(1,+∞)时,下降算法具有更好的性能。这意味着与p∈(1,2)相关的优值函数(例如p = 1.5)在数值计算中比Fischer-Burmeister优值函数更有效,后者精确对应于p = 2。

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