APPROXIMATION RESULTS FOR SOLUTION OF STOCHASTIC HARD-SOFT CONSTRAINED CONVEX FEASIBILITY PROBLEM

A. Udom, C. Nweke, G. Mbaeyi, E. O. Ossai
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Abstract

In this work, a random-type iterative scheme is proposed and used for random approximation of the solution of stochastic convex feasibility problem involving hard constraints (that must be satisfied) and soft constraints (whose proximity function is minimized) in Hilbert space. The iterative algorithm is based on an alternating projection with lipschitzian and firmly non-expansive mapping. Convergence results of the random-type iterative scheme to the solution of the stochastic convex feasibility problem is proved. These will serve as an extension, unification and generalization of different established classic results in the literature.
随机软硬约束凸可行性问题解的逼近结果
本文提出了一种随机迭代格式,并将其用于希尔伯特空间中涉及硬约束(必须满足)和软约束(其邻近函数最小)的随机凸可行性问题的解的随机逼近。迭代算法基于交替投影,具有lipschitzian和非膨胀映射。证明了随机型迭代格式对随机凸可行性问题解的收敛性。这将是对文献中不同的经典成果的延伸、统一和概括。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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