New inertial forward-backward algorithm for convex minimization with applications

DEMONSTRATIO MATHEMATICA(2023)

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Abstract
In this work, we present a new proximal gradient algorithm based on Tseng's extragradient method and an inertial technique to solve the convex minimization problem in real Hilbert spaces. Using the stepsize rules, the selection of the Lipschitz constant of the gradient of functions is avoided. We then prove the weak convergence theorem and present the numerical experiments for image recovery. The comparative results show that the proposed algorithm has better efficiency than other methods.
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Key words
Tseng's extragradient method,image recovery,inertial technique,minimization problem
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