Gradient-descent iterative algorithm for solving exact and weighted least-squares solutions of rectangular linear systems

dc.contributor.authorKanjanaporn Tansri
dc.contributor.authorPattrawut Chansangiam
dc.date.accessioned2025-07-21T06:08:27Z
dc.date.issued2023-01-01
dc.description.abstract<abstract><p>Consider a linear system $ Ax = b $ where the coefficient matrix $ A $ is rectangular and of full-column rank. We propose an iterative algorithm for solving this linear system, based on gradient-descent optimization technique, aiming to produce a sequence of well-approximate least-squares solutions. Here, we consider least-squares solutions in a full generality, that is, we measure any related error through an arbitrary vector norm induced from weighted positive definite matrices $ W $. It turns out that when the system has a unique solution, the proposed algorithm produces approximated solutions converging to the unique solution. When the system is inconsistent, the sequence of residual norms converges to the weighted least-squares error. Our work includes the usual least-squares solution when $ W = I $. Numerical experiments are performed to validate the capability of the algorithm. Moreover, the performance of this algorithm is better than that of recent gradient-based iterative algorithms in both iteration numbers and computational time.</p></abstract>
dc.identifier.doi10.3934/math.2023596
dc.identifier.urihttps://dspace.kmitl.ac.th/handle/123456789/12059
dc.subjectLeast-squares function approximation
dc.subjectSequence (biology)
dc.subjectRank (graph theory)
dc.subject.classificationMatrix Theory and Algorithms
dc.titleGradient-descent iterative algorithm for solving exact and weighted least-squares solutions of rectangular linear systems
dc.typeArticle

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