AIMS Mathematics (Jun 2024)

A recent proximal gradient algorithm for convex minimization problem using double inertial extrapolations

  • Suparat Kesornprom,
  • Papatsara Inkrong,
  • Uamporn Witthayarat ,
  • Prasit Cholamjiak

DOI
https://doi.org/10.3934/math.2024917
Journal volume & issue
Vol. 9, no. 7
pp. 18841 – 18859

Abstract

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In this study, we suggest a new class of forward-backward (FB) algorithms designed to solve convex minimization problems. Our method incorporates a linesearch technique, eliminating the need to choose Lipschitz assumptions explicitly. Additionally, we apply double inertial extrapolations to enhance the algorithm's convergence rate. We establish a weak convergence theorem under some mild conditions. Furthermore, we perform numerical tests, and apply the algorithm to image restoration and data classification as a practical application. The experimental results show our approach's superior performance and effectiveness, surpassing some existing methods in the literature.

Keywords