Two-step Newton's method for deflation-one singular zeros of analytic systems

IF 0.6 4区 数学 Q4 COMPUTER SCIENCE, THEORY & METHODS
Kisun Lee , Nan Li , Lihong Zhi
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引用次数: 0

Abstract

We propose a two-step Newton's method for refining an approximation of a singular zero whose deflation process terminates after one step, also known as a deflation-one singularity. Given an isolated singular zero of a square analytic system, our algorithm exploits an invertible linear operator obtained by combining the Jacobian and a projection of the Hessian in the direction of the kernel of the Jacobian. We prove the quadratic convergence of the two-step Newton method when it is applied to an approximation of a deflation-one singular zero. Also, the algorithm requires a smaller size of matrices than the existing methods, making it more efficient. We demonstrate examples and experiments to show the efficiency of the method.

解压缩的两步牛顿法——解析系统的一个奇异零
我们提出了一种两步牛顿法,用于精炼奇异零的近似,其紧缩过程在一步后终止,也称为紧缩-一个奇点。给定一个孤立的平方解析系统的奇异零,我们的算法利用了一个可逆的线性算子,该算子由雅可比矩阵和Hessian在雅可比矩阵核方向上的投影组合而成。我们证明了两步牛顿法在求解紧缩- 1奇异零近似时的二次收敛性。此外,该算法比现有方法需要更小的矩阵大小,使其更高效。通过实例和实验验证了该方法的有效性。
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来源期刊
Journal of Symbolic Computation
Journal of Symbolic Computation 工程技术-计算机:理论方法
CiteScore
2.10
自引率
14.30%
发文量
75
审稿时长
142 days
期刊介绍: An international journal, the Journal of Symbolic Computation, founded by Bruno Buchberger in 1985, is directed to mathematicians and computer scientists who have a particular interest in symbolic computation. The journal provides a forum for research in the algorithmic treatment of all types of symbolic objects: objects in formal languages (terms, formulas, programs); algebraic objects (elements in basic number domains, polynomials, residue classes, etc.); and geometrical objects. It is the explicit goal of the journal to promote the integration of symbolic computation by establishing one common avenue of communication for researchers working in the different subareas. It is also important that the algorithmic achievements of these areas should be made available to the human problem-solver in integrated software systems for symbolic computation. To help this integration, the journal publishes invited tutorial surveys as well as Applications Letters and System Descriptions.
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