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首页> 外文期刊>Abstract and applied analysis >Implicit Relaxed and Hybrid Methods with Regularization for Minimization Problems and Asymptotically Strict Pseudocontractive Mappings in the Intermediate Sense
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Implicit Relaxed and Hybrid Methods with Regularization for Minimization Problems and Asymptotically Strict Pseudocontractive Mappings in the Intermediate Sense

机译:隐式松弛和带正则化的混合方法,用于最小化问题和中间意义上的渐近严格伪压缩映射

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We first introduce an implicit relaxed method with regularization for finding a common element of the set of fixed points of an asymptotically strict pseudocontractive mappingSin the intermediate sense and the set of solutions of the minimization problem (MP) for a convex and continuously Frechet differentiable functional in the setting of Hilbert spaces. The implicit relaxed method with regularization is based on three well-known methods: the extragradient method, viscosity approximation method, and gradient projection algorithm with regularization. We derive a weak convergence theorem for two sequences generated by this method. On the other hand, we also prove a new strong convergence theorem by an implicit hybrid method with regularization for the MP and the mappingS. The implicit hybrid method with regularization is based on four well-known methods: the CQ method, extragradient method, viscosity approximation method, and gradient projection algorithm with regularization.
机译:我们首先介绍一种带正则化的隐式松弛方法,用于寻找渐近严格伪收缩映射的不动点集的公共元素。在中间意义上,凸和连续Frechet可微函数的最小化问题(MP)的解的集合。希尔伯特空间的设置。带正则化的隐式松弛方法基于三种众所周知的方法:超梯度法,粘度逼近法和带正则化的梯度投影算法。我们推导了该方法生成的两个序列的弱收敛定理。另一方面,我们还通过对MP和mappingS进行正则化的隐式混合方法,证明了新的强收敛定理。带正则化的隐式混合方法基于四种众所周知的方法:CQ方法,超梯度法,粘度逼近法和带正则化的梯度投影算法。

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