Publication | Open Access
Approximated least-squares solutions of a generalized Sylvester-transpose matrix equation via gradient-descent iterative algorithm
12
Citations
25
References
2021
Year
Numerical AnalysisAssociated MatrixGeneralized Sylvester-transpose EquationEngineeringMatrix FactorizationComputer EngineeringSemidefinite ProgrammingInverse ProblemsMatrix MethodGradient-descent Iterative AlgorithmMatrix TheoryMatrix AnalysisApproximation TheoryLeast-squares SolutionsLow-rank ApproximationRectangular Matrix Coefficients
Abstract This paper proposes an effective gradient-descent iterative algorithm for solving a generalized Sylvester-transpose equation with rectangular matrix coefficients. The algorithm is applicable for the equation and its interesting special cases when the associated matrix has full column-rank. The main idea of the algorithm is to have a minimum error at each iteration. The algorithm produces a sequence of approximated solutions converging to either the unique solution, or the unique least-squares solution when the problem has no solution. The convergence analysis points out that the algorithm converges fast for a small condition number of the associated matrix. Numerical examples demonstrate the efficiency and effectiveness of the algorithm compared to renowned and recent iterative methods.
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