首页> 外文期刊>Mathematical and Computational Applications >Relaxed Projection Methods with Self-Adaptive Step Size for Solving Variational Inequality and Fixed Point Problems for an Infinite Family of Multivalued Relatively Nonexpansive Mappings in Banach Spaces
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Relaxed Projection Methods with Self-Adaptive Step Size for Solving Variational Inequality and Fixed Point Problems for an Infinite Family of Multivalued Relatively Nonexpansive Mappings in Banach Spaces

机译:具有自适应步长的轻松投影方法,用于在Banach空间中解决无限家族的无限家族的变分不等式和定点问题

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In each iteration, the projection methods require computing at least one projection onto the closed convex set. However, projections onto a general closed convex set are not easily executed, a fact that might affect the efficiency and applicability of the projection methods. To overcome this drawback, we propose two iterative methods with self-adaptive step size that combines the Halpern method with a relaxed projection method for approximating a common solution of variational inequality and fixed point problems for an infinite family of multivalued relatively nonexpansive mappings in the setting of Banach spaces. The core of our algorithms is to replace every projection onto the closed convex set with a projection onto some half-space and this guarantees the easy implementation of our proposed methods. Moreover, the step size of each algorithm is self-adaptive. We prove strong convergence theorems without the knowledge of the Lipschitz constant of the monotone operator and we apply our results to finding a common solution of constrained convex minimization and fixed point problems in Banach spaces. Finally, we present some numerical examples in order to demonstrate the efficiency of our algorithms in comparison with some recent iterative methods.
机译:在每次迭代中,投影方法需要将至少一个投影计算到闭合凸起集上。然而,在一般闭合凸集上的投影不容易执行,这可能影响投影方法的效率和适用性。为了克服这一缺点,我们提出了两个具有自适应步长的迭代方法,该方法将HALPern方法与放宽的投影方法相结合,用于近似于在设置中的无限族的多程族的变分不等式和定点问题的常见解。 Banach空间。我们的算法的核心是将每一个投影替换到闭合凸起集中,投影到一些半空间,这可以轻松实现我们所提出的方法。此外,每种算法的步长是自适应的。我们证明了强大的收敛定理,而无需了解单调运营商的嘴唇常数,我们应用了我们的结果,以发现Banach空间中受约束凸起最小化和定点问题的共同解决方案。最后,我们提出了一些数值例子,以便与最近的一些迭代方法进行比较,以展示我们的算法的效率。

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