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Conic convex programming and self-dual embedding

机译:圆锥凸编程和自对偶嵌入

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How to initialize an algorithm to solve an optimization problem is of great theoretical and practical importance. In the simplex method for linear programming this issue is resolved by either the tow-phase approach or using the so-called big M technique. In the interior point method, there is a more elegant way to deal with the initialization problem, viz. the self-dual embedding technique proposed by Ye, Todd and Mizuno [30]. For linear programming this technique makes it possible to identify an optimal solution or conclude the problem to be infeasible./unbounded by solving its embedded self-dual problem. The embedded self-dual problem has a trivial initial solution and has the same structure as the original problem. Hence, it eliminates the need to consider the initialization problem at all. In this paper, we extend this approach to solve general conic convex programming, including semidefinite programming. Since a nonlinear conic convex programming problem may lack the so-called strict complementarity property, it causes difficulties in identifying solutions for the original problem, based on solutions for the embedded self-dual system. We provide numerous examples from semidefinite programming to illustrate various possibilities which have no analogue in the linear programming case.
机译:如何初始化算法来解决优化问题具有重要的理论和实践意义。在用于线性编程的单纯形方法中,此问题可以通过两阶段方法或使用所谓的big M技术来解决。在内部点方法中,有一种更优雅的方法来处理初始化问题,即。由Ye,Todd和Mizuno提出的自对偶嵌入技术[30]。对于线性编程,此技术使得可以通过解决其嵌入式自对偶问题来确定最佳解决方案或得出不可行/无界的问题。嵌入的自我对偶问题具有简单的初始解,并且具有与原始问题相同的结构。因此,它根本不需要考虑初始化问题。在本文中,我们将这种方法扩展为求解一般的圆锥凸规划,包括半定规划。由于非线性圆锥凸规划问题可能缺少所谓的严格互补性质,因此,在基于嵌入式自对偶系统的解的基础上,难以确定原始问题的解。我们提供了来自半定编程的大量示例,以说明在线性编程情况下没有任何模拟的各种可能性。

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