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Weak and strong convergences of the generalized penalty Forward-Forward and Forward-Backward splitting algorithms for solving bilevel hierarchical pseudomonotone equilibrium problems

机译:用于求解Bilevel分层伪单调均衡问题的广义惩罚前向和前后拆分算法的弱和强大趋同

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摘要

In this paper, we present two penalty-splitting inspired iteration schemes (PFFSA) and (PFFSA) for hierarchical equilibrium problems in Hilbert space. Based on the Opial-Passty lemma, we propose weak ergodic convergence and weak convergence of the iterative sequences generated by the Forward-Forward algorithm (PFFSA) and the Forward-Backward algorithm (PFFSA), which are proved under quite mild conditions: the bifunction of the two level equilibrium problems are supposed pseudomonotone. For strong convergence, we first add a strong monotonicity condition on the objective bifunction. We present after, a strong convergence result of algorithm (PFFSA) by adding a topological assumption, i.e. the objective bifunction is of class (S+). Some examples are given to illustrate our results. The first example deals with pseudomonotone variational inequalities and convex minimization problem in the upper level problem. In the second one, we propose a convex minimization in the lower-level problem, where strong convergence of (PFFSA) to a minimum point is insured under infcompactness condition for objective function. These convergence results are new and generalize some recent results in this field.
机译:在本文中,我们在希尔伯特空间中提出了两个罚款分裂启发迭代计划(PFFSA)和(PFFSA),用于赫伯特空间中的分层均衡问题。基于片状引理,我们提出了前进算法(PFFSA)产生的迭代序列的弱ergodic收敛性和弱聚,以及前后算法(PFFSA),在相当温和的条件下证明:双击两个级别的均衡问题都是假期的假单胞菌。对于强烈的收敛性,我们首先在客观的双芯片上增加强大的单调性条件。我们出示之后,通过添加拓扑假设,即目标双函数是课程(S +)的强烈收敛结果。给出了一些例子来说明我们的结果。第一个例子在上层问题中涉及假单胞态单位的变分不等式和凸起最小化问题。在第二个中,我们提出了较低级别的凸起最小化,其中(PFFSA)的强会聚在目标函数的Infcompactness条件下被保险。这些收敛结果是新的,并概括了该领域的一些最新结果。

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