variational inclusion
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Author(s):  
Wanna Sriprad ◽  
Somnuk Srisawat

The purpose of this paper is to study the convergence analysis of an intermixed algorithm for finding the common element of the set of solutions of split monotone variational inclusion problem (SMIV) and the set of a finite family of variational inequality problems. Under the suitable assumption, a strong convergence theorem has been proved in the framework of a real Hilbert space. In addition, by using our result, we obtain some additional results involving split convex minimization problems (SCMPs) and split feasibility problems (SFPs). Also, we give some numerical examples for supporting our main theorem.


Symmetry ◽  
2021 ◽  
Vol 13 (12) ◽  
pp. 2250
Author(s):  
Thidaporn Seangwattana ◽  
Kamonrat Sombut ◽  
Areerat Arunchai ◽  
Kanokwan Sitthithakerngkiet

The goal of this study was to show how a modified variational inclusion problem can be solved based on Tseng’s method. In this study, we propose a modified Tseng’s method and increase the reliability of the proposed method. This method is to modify the relaxed inertial Tseng’s method by using certain conditions and the parallel technique. We also prove a weak convergence theorem under appropriate assumptions and some symmetry properties and then provide numerical experiments to demonstrate the convergence behavior of the proposed method. Moreover, the proposed method is used for image restoration technology, which takes a corrupt/noisy image and estimates the clean, original image. Finally, we show the signal-to-noise ratio (SNR) to guarantee image quality.


2021 ◽  
Vol 2021 (1) ◽  
Author(s):  
Raweerote Suparatulatorn ◽  
Watcharaporn Cholamjiak ◽  
Aviv Gibali ◽  
Thanasak Mouktonglang

AbstractIn this work we propose an accelerated algorithm that combines various techniques, such as inertial proximal algorithms, Tseng’s splitting algorithm, and more, for solving the common variational inclusion problem in real Hilbert spaces. We establish a strong convergence theorem of the algorithm under standard and suitable assumptions and illustrate the applicability and advantages of the new scheme for signal recovering problem arising in compressed sensing.


Author(s):  
Emeka Chigaemezu Godwin ◽  
Hammed Anuoluwapo Abass ◽  
Chinedu Izuchukwu ◽  
Oluwatosin Temitope Mewomo

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