On system of split generalised mixed equilibrium and fixed point problems for multivalued mappings with no prior knowledge of operator norm

Pub Date : 2022-01-02 DOI:10.24193/fpt-ro.2022.1.04
T. O. Alakoya, A. Taiwo, O. Mewomo
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引用次数: 2

Abstract

. In this paper, we introduce the System of Split Generalized Mixed Equilibrium Problem (SSGMEP), which is more general than the existing well known split equilibrium problem and its generalizations, split variational inequality problem and several other related problems. We propose a new iterative algorithm of inertial form which is independent on the operator norm for solving SSGMEP in real Hilbert spaces. Motivated by the adaptive step size technique and inertial method, we incorporate self adaptive step size and inertial technique to overcome the difficulty of having to compute the operator norm and to accelerate the convergence of the proposed method. Under standard and mild assumptions on the control sequences, we establish the strong convergence of the algorithm, obtain a common solution of the SSGMEP and fixed point of finite family of multivalued demicontractive mappings. We obtain some consequent results which complement several existing results in this direction in the literature. We also apply our results to finding solution of split convex minimisation problems. Numerical example is presented to illustrate the performance of our method as well as comparing it with its non-inertial
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不具有算子范数先验知识的多值映射的分裂广义混合平衡系统和不动点问题
在本文中,我们介绍了分裂广义混合平衡问题的系统(SSGMEP),它比现有的众所周知的分裂平衡问题及其推广、分裂变分不等式问题和其他几个相关问题更具一般性。我们提出了一种新的惯性形式的迭代算法,它独立于算子范数,用于求解实Hilbert空间中的SSGMEP。受自适应步长技术和惯性方法的启发,我们将自适应步长和惯性技术结合起来,以克服必须计算算子范数的困难,并加速所提出方法的收敛。在对控制序列的标准和温和假设下,我们建立了算法的强收敛性,得到了SSGMEP和多值半压缩映射的有限族的不动点的一个公共解。我们得到了一些相应的结果,这些结果补充了文献中在这个方向上的几个现有结果。我们还将我们的结果应用于求解分裂凸最小化问题。通过算例说明了该方法的性能,并与非惯性方法进行了比较
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