Algorithms (Jan 2023)

Improved Gradient Descent Iterations for Solving Systems of Nonlinear Equations

  • Predrag S. Stanimirović,
  • Bilall I. Shaini,
  • Jamilu Sabi’u,
  • Abdullah Shah,
  • Milena J. Petrović,
  • Branislav Ivanov,
  • Xinwei Cao,
  • Alena Stupina,
  • Shuai Li

DOI
https://doi.org/10.3390/a16020064
Journal volume & issue
Vol. 16, no. 2
p. 64

Abstract

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This research proposes and investigates some improvements in gradient descent iterations that can be applied for solving system of nonlinear equations (SNE). In the available literature, such methods are termed improved gradient descent methods. We use verified advantages of various accelerated double direction and double step size gradient methods in solving single scalar equations. Our strategy is to control the speed of the convergence of gradient methods through the step size value defined using more parameters. As a result, efficient minimization schemes for solving SNE are introduced. Linear global convergence of the proposed iterative method is confirmed by theoretical analysis under standard assumptions. Numerical experiments confirm the significant computational efficiency of proposed methods compared to traditional gradient descent methods for solving SNE.

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