Superlinear convergence of infeasible-interior-point methods for linear programming

Y Zhang, D Zhang - Mathematical programming, 1994 - Springer
Y Zhang, D Zhang
Mathematical programming, 1994Springer
At present the interior-point methods of choice are primal—dual infeasible-interior-point
methods, where the iterates are kept positive, but allowed to be infeasible. In practice, these
methods have demonstrated superior computational performance. From a theoretical point
of view, however, they have not been as thoroughly studied as their counterparts—feasible-
interior-point methods, where the iterates are required to be strictly feasible. Recently,
Kojima et al., Zhang, Mizuno and Potra studied the global convergence of algorithms in the …
Abstract
At present the interior-point methods of choice are primal—dual infeasible-interior-point methods, where the iterates are kept positive, but allowed to be infeasible. In practice, these methods have demonstrated superior computational performance. From a theoretical point of view, however, they have not been as thoroughly studied as their counterparts — feasible-interior-point methods, where the iterates are required to be strictly feasible. Recently, Kojima et al., Zhang, Mizuno and Potra studied the global convergence of algorithms in the primal—dual infeasible-interior-point framework. In this paper, we continue to study this framework, and in particular we study the local convergence properties of algorithms in this framework. We construct parameter selections that lead toQ-superlinear convergence for a merit function andR-superlinear convergence for the iteration sequence, both at rate 1 +τ whereτ can be arbitrarily close to one.
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