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Quadratically and Superlinearly Convergent Algorithms for the Solution of Inequality Constrained Minimization Problems

机译:不等式约束最小化问题的二次和超线性收敛算法

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In this paper, some Newton and quasi-Newton algorithms for the solution of inequality constrained minimization problems are considered. All the algorithms described produce sequences {xk} converging q-superlinearly to the solution Furthermore, under mild assumptions, a q-quadratic convergence rate in x is also attained. Other features of these algorithms are that only the solution of linear systems of equations is required at each iteration and that the strict complementarity assumption is never invoked. First, the superlinear or quadratic convergence rate of a Newton-like algorithm is proved. Then, a simpler version of this algorithm is studied, and it is shown that it is superlinearly convergent. Finally, quasi-Newton versions of the previous algorithms are considered and, provided the sequence defined by the algorithms converges, a characterization of superlinear convergence extending the result of Boggs, Tolle, and Wang is given.
机译:本文考虑了一些求解不等式约束最小化问题的牛顿算法和拟牛顿算法。所描述的所有算法都产生序列{xk} q超线性收敛到该解。此外,在温和的假设下,x中的q二次收敛速度也达到了。这些算法的其他特征是每次迭代仅需要线性方程组的解,并且永远不会调用严格的互补假设。首先,证明了牛顿式算法的超线性或二次收敛速度。然后,研究了该算法的简单版本,并证明了它是超线性收敛的。最后,考虑了先前算法的拟牛顿版本,并在算法定义的序列收敛的情况下,给出了超线性收敛的特征,扩展了Boggs,Tolle和Wang的结果。

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