Generalized Composed Alternating Relaxed Projection Algorithm for Two-Set Feasibility Problem
Abstract
We study the two-set feasibility problem of finding a point in the intersection X Y of closed convex sets in a Hilbert space. We propose a generalized composed alternating relaxed projection algorithm (gCARPA) that blends Douglas-Rachford-type and projection-reflection-type dynamics via an outer averaging step μ and an internal relaxation (γ,θ,η). The algorithm contains several classical projection methods as special cases. We also introduce its non-stationary variant, in which (γk,θk,ηk) vary over iterations, and establish its convergence. For the subspace feasibility model, we derive an explicit spectral characterization via principal-angle block decompositions, yielding computable subdominant-eigenvalue factors and a minimax parameter-selection recipe in a symmetric regime that targets critical damping on principal-angle planes. Numerical experiments illustrate that the generalized relaxation and its non-stationary tuning can improve or match baseline methods in problem-dependent regimes.
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