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The Prediction-correction and Relaxed Hybrid Steepest-descent Method for Variational Inequalities

机译:变分不等式的预测校正和宽松混合近期滴定方法

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This paper proposes a new prediction-correction and relaxed hybrid steepest-descent method for a class of the variational inequality problem with a Lipschitzi and strongly monotone operator on a nonempty closed convex subset in real Hilbert space. In order to improve the computational efficiency, the proposed method integrates the Gauss-Seidel method into the prediction-correction method while taking advantage of some fundamental properties of the real Hilbert space. Finally, strong convergence of this method is proved under suitable assumptions.
机译:本文提出了一种新的预测校正和放松的混合混合速度 - 用于一类与Lipschitzi和强单调的运算符在真正的希尔伯特空间中的非空闭凸子集中的变分不等式问题。为了提高计算效率,所提出的方法将高斯-Seidel方法集成到预测校正方法中,同时利用真正的希尔伯特空间的一些基本属性。最后,在合适的假设下证明了这种方法的强烈收敛性。

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