Subgradient Projection Algorithms and Approximate Solutions of Convex Feasibility Problems

Subgradient Projection Algorithms and Approximate Solutions of Convex Feasibility Problems

0.00 Avg rating0 Votes
Article ID: iaor20132858
Volume: 157
Issue: 3
Start Page Number: 803
End Page Number: 819
Publication Date: Jun 2013
Journal: Journal of Optimization Theory and Applications
Authors:
Keywords: programming: convex
Abstract:

In the present paper, we use subgradient projection algorithms for solving convex feasibility problems. We show that almost all iterates, generated by a subgradient projection algorithm in a Hilbert space, are approximate solutions. Moreover, we obtain an estimate of the number of iterates which are not approximate solutions. In a finite‐dimensional case, we study the behavior of the subgradient projection algorithm in the presence of computational errors. Provided computational errors are bounded, we prove that our subgradient projection algorithm generates a good approximate solution after a certain number of iterates.

Reviews

Required fields are marked *. Your email address will not be published.