Data-Driven Neural Network Solvers for Complex-Valued Matrix Computations

Authors

  • Hassan Al-Mahdawi Universitu of Diyala

Keywords:

Neural network, complex-valued, LU decomposition, residual errors

Abstract

The issues of complex-valued matrices are rampant in applied mathematics, physics, signal processing, electromagnetism, quantum mechanics, and control systems. In complex linear systems and matrix computations such as factorization, eigenvalues and inversion, straight numerical solutions can be expensive and prone to ill-conditioning, and the size of a problem may be limited to large scale or even real-time computing. To address complex-valued matrix problems, this study suggests a neural network-based model whereby structured learning framework is employed to learn complex-valued problems simultaneously between the real and imaginary components. The proposed method will result in robust and efficient representations of complex matrices through numerical values and algebraic constraints directly integrated into the loss, which will provide credible and efficient methods of converting matrix-based inputs to the desired outputs. Much of the activity in the field is managed using the framework, including solving complex linear systems, finding approximations to complex operators, and finding approximations to the inversion of matrices. Numerical experiments show that the neural solver is as precise as traditional numerical methods, but has fewer noise characteristics, capability to adapt to ill-conditioned matrices, and is faster to solve problems repeatedly. The proposed approach is suitable to use in the data-driven numerical linear algebra in areas with complex values.

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Published

2026-04-30