Weak and Strong Convergence of Generalized Proximal Point Algorithms with Relaxed Parameters
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Publication:6380267
DOI10.1007/S10898-022-01241-0arXiv2110.07015MaRDI QIDQ6380267
Author name not available (Why is that?)
Publication date: 13 October 2021
Abstract: In this work, we propose and study a framework of generalized proximal point algorithms associated with a maximally monotone operator. We indicate sufficient conditions on the regularization and relaxation parameters of generalized proximal point algorithms for the equivalence of the boundedness of the sequence of iterations generated by this algorithm and the non-emptiness of the zero set of the maximally monotone operator, and for the weak and strong convergence of the algorithm. Our results cover or improve many results on generalized proximal point algorithms in our references. Improvements of our results are illustrated by comparing our results with related known ones.
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