To solve monotone variational inequalities, some existing APPA-based descent methods utilize the iterates generated by the well-known approximate proximal point algorithms (APPA) to construct descent directions. This paper aims at improving these APPA-based descent methods by incorporating optimal step-sizes in both the extra-gradient steps and the descent steps. Global convergence is proved under mild assumptions. The superiority to existing methods is verified both theoretically and computationally. © 2007 Elsevier B.V. All rights reserved.Link_to_subscribed_fulltex
Recently, Fukushima proposed a differentiable optimization framework for solving strictly monotone a...
We present several novel methods for solving general (pseudo-) monotone variational inequalities. Th...
AbstractThe extragradient type methods are a class of efficient direct methods. For solving monotone...
Proximal point algorithms (PPA) are attractive methods for monotone variational inequalities. The ap...
AbstractProximal point algorithms (PPA) are attractive methods for monotone variational inequalities...
AbstractSince proximal point algorithms (abbreviated as PPA) are attractive for solving monotone var...
AbstractSince proximal point algorithms (abbreviated as PPA) are attractive for solving monotone var...
We present a framework for descent algorithms that solve the monotone variational inequality problem...
This article presents a descent method for solving monotone variational inequalities with separate s...
给出求解单调变分不等式问题的一个近似邻近点算法,在不需要任何中间步骤的条件下证明算法的收敛性.本算法的误差准则比已知算法更宽松.An approximate proximal point algori...
We present a framework for descent algorithms that solve the monotone variational inequality problem...
为了求解单调变分不等式,建立了一个新的误差准则,并且在不需要增加诸如投影,外梯度等步骤的情况下证明了邻近点算法的收敛性.In this paper, a new error criterion of ...
Some existing decomposition methods for solving a class of variational inequalities (VIs) with separ...
In this paper, a new descent-projection method with a new search direction for monotone structured v...
This paper addresses the question of global convergence of descent processes for solving monotone va...
Recently, Fukushima proposed a differentiable optimization framework for solving strictly monotone a...
We present several novel methods for solving general (pseudo-) monotone variational inequalities. Th...
AbstractThe extragradient type methods are a class of efficient direct methods. For solving monotone...
Proximal point algorithms (PPA) are attractive methods for monotone variational inequalities. The ap...
AbstractProximal point algorithms (PPA) are attractive methods for monotone variational inequalities...
AbstractSince proximal point algorithms (abbreviated as PPA) are attractive for solving monotone var...
AbstractSince proximal point algorithms (abbreviated as PPA) are attractive for solving monotone var...
We present a framework for descent algorithms that solve the monotone variational inequality problem...
This article presents a descent method for solving monotone variational inequalities with separate s...
给出求解单调变分不等式问题的一个近似邻近点算法,在不需要任何中间步骤的条件下证明算法的收敛性.本算法的误差准则比已知算法更宽松.An approximate proximal point algori...
We present a framework for descent algorithms that solve the monotone variational inequality problem...
为了求解单调变分不等式,建立了一个新的误差准则,并且在不需要增加诸如投影,外梯度等步骤的情况下证明了邻近点算法的收敛性.In this paper, a new error criterion of ...
Some existing decomposition methods for solving a class of variational inequalities (VIs) with separ...
In this paper, a new descent-projection method with a new search direction for monotone structured v...
This paper addresses the question of global convergence of descent processes for solving monotone va...
Recently, Fukushima proposed a differentiable optimization framework for solving strictly monotone a...
We present several novel methods for solving general (pseudo-) monotone variational inequalities. Th...
AbstractThe extragradient type methods are a class of efficient direct methods. For solving monotone...