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Higher order Jacobi method for solving a system of linear equations

Higher order Jacobi method for solving a system of linear equations

来源:Arxiv_logoArxiv
英文摘要

This work proposes a higher-order iterative framework for solving matrix equations, inspired by the structure and functionality of neural networks. A modification of the classical Jacobi method is introduced to compute higher-order coefficient matrices through matrix-matrix multiplications. The resulting method, termed the higher-order Jacobi method, structurally resembles a shallow linear network and allows direct computation of the inverse of the coefficient matrix. Building on this, an iterative scheme is developed that, once the network parameters are determined for a known system, enables efficient resolution of system variations without re-computing the coefficients. This iterative process naturally assumes the form of a deep recurrent neural network. The proposed approach moves beyond conventional Physics-Informed Neural Networks (PINNs) by providing an explicit, training-free definition of network parameters rooted in physical and mathematical formulations. Computational analysis demonstrates improved order of complexity, suggesting a promising direction for algorithmic efficiency in solving linear systems. This methodology opens avenues for interpretable and scalable solutions to physically motivated problems in computational science.

Nithin Kumar Goona、Lama Tarsissi

数学

Nithin Kumar Goona,Lama Tarsissi.Higher order Jacobi method for solving a system of linear equations[EB/OL].(2025-05-22)[2025-06-19].https://arxiv.org/abs/2505.16906.点此复制

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