53 research outputs found
A von Neumann Alternating Method for Finding Common Solutions to Variational Inequalities
Modifying von Neumann's alternating projections algorithm, we obtain an
alternating method for solving the recently introduced Common Solutions to
Variational Inequalities Problem (CSVIP). For simplicity, we mainly confine our
attention to the two-set CSVIP, which entails finding common solutions to two
unrelated variational inequalities in Hilbert space.Comment: Nonlinear Analysis Series A: Theory, Methods & Applications, accepted
for publicatio
Inertial projection-type methods for solving quasi-variational inequalities in real Hilbert spaces
In this paper, we introduce an inertial projection-type method with different updating strategies for solving quasi-variational inequalities with strongly monotone and Lipschitz continuous operators in real Hilbert spaces. Under standard assumptions, we establish different strong convergence results for the proposed algorithm. Primary numerical experiments demonstrate the potential applicability of our scheme compared with some related methods in the literature
Bounded perturbation resilience of extragradient-type methods and their applications
In this paper we study the bounded perturbation resilience of the
extragradient and the subgradient extragradient methods for solving variational
inequality (VI) problem in real Hilbert spaces. This is an important property
of algorithms which guarantees the convergence of the scheme under summable
errors, meaning that an inexact version of the methods can also be considered.
Moreover, once an algorithm is proved to be bounded perturbation resilience,
superiorizion can be used, and this allows flexibility in choosing the bounded
perturbations in order to obtain a superior solution, as well explained in the
paper. We also discuss some inertial extragradient methods. Under mild and
standard assumptions of monotonicity and Lipschitz continuity of the VI's
associated mapping, convergence of the perturbed extragradient and subgradient
extragradient methods is proved. In addition we show that the perturbed
algorithms converges at the rate of . Numerical illustrations are given
to demonstrate the performances of the algorithms.Comment: Accepted for publication in The Journal of Inequalities and
Applications. arXiv admin note: text overlap with arXiv:1711.01936 and text
overlap with arXiv:1507.07302 by other author
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