Convergence of a Family of Methods with Symmetric, Antisymmetric Parameters and Weight Functions

Symmetry Pub Date : 2024-09-09 DOI:10.3390/sym16091179
Ramandeep Behl, Ioannis K. Argyros
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Abstract

Many problems in scientific research are reduced to a nonlinear equation by mathematical means of modeling. The solutions of such equations are found mostly iteratively. Then, the convergence order is routinely shown using Taylor formulas, which in turn make sufficient assumptions about derivatives which are not present in the iterative method at hand. This technique restricts the usage of the method which may converge even if these assumptions, which are not also necessary, hold. The utilization of these methods can be extended under less restrictive conditions. This new paper contributes in this direction, since the convergence is established by assumptions restricted exclusively on the functions present on the method. Although the technique is demonstrated on a two-step Traub-type method with usually symmetric parameters and weight functions, due to its generality it can be extended to other methods defined on the real line or more abstract spaces. Numerical experimentation complement and further validate the theory.
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具有对称、非对称参数和权重函数的方法族的收敛性
科学研究中的许多问题都可以通过数学建模方法简化为非线性方程。这些方程的解大多是通过迭代找到的。然后,通常使用泰勒公式来显示收敛阶次,而泰勒公式又对导数做了充分的假设,这些假设在当前的迭代法中并不存在。这种技术限制了方法的使用,即使这些假设(并非必要条件)成立,方法也可能收敛。这些方法的使用范围可以在限制较少的条件下得到扩展。这篇新论文在这个方向上做出了贡献,因为收敛性是通过完全限制于方法中存在的函数的假设来确定的。虽然该技术是在通常具有对称参数和权重函数的两步 Traub 类型方法上演示的,但由于其通用性,它可以扩展到定义在实线或更抽象空间上的其他方法。数值实验补充并进一步验证了这一理论。
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