Hybrid Newton-like Inverse Free Algorithms for Solving Nonlinear Equations

Algorithms Pub Date : 2024-04-10 DOI:10.3390/a17040154
Ioannis K. Argyros, S. George, Samundra Regmi, Christopher I. Argyros
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Abstract

Iterative algorithms requiring the computationally expensive in general inversion of linear operators are difficult to implement. This is the reason why hybrid Newton-like algorithms without inverses are developed in this paper to solve Banach space-valued nonlinear equations. The inverses of the linear operator are exchanged by a finite sum of fixed linear operators. Two types of convergence analysis are presented for these algorithms: the semilocal and the local. The Fréchet derivative of the operator on the equation is controlled by a majorant function. The semi-local analysis also relies on majorizing sequences. The celebrated contraction mapping principle is utilized to study the convergence of the Krasnoselskij-like algorithm. The numerical experimentation demonstrates that the new algorithms are essentially as effective but less expensive to implement. Although the new approach is demonstrated for Newton-like algorithms, it can be applied to other single-step, multistep, or multipoint algorithms using inverses of linear operators along the same lines.
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求解非线性方程的混合牛顿式自由逆算法
迭代算法需要对线性算子进行计算昂贵的一般反演,很难实现。因此,本文开发了无反演的混合牛顿算法,用于求解巴拿赫空间值非线性方程。线性算子的倒数由固定线性算子的有限和交换。本文针对这些算法提出了两种收敛分析方法:半局部收敛分析和局部收敛分析。方程上算子的弗雷谢特导数由主要函数控制。半局部分析也依赖于大化序列。著名的收缩映射原理被用来研究类似 Krasnoselskij 算法的收敛性。数值实验证明,新算法本质上同样有效,但实施成本更低。虽然新方法是针对类似牛顿的算法进行演示的,但它也可以按照同样的思路应用于使用线性算子逆的其他单步、多步或多点算法。
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