An O(√nL)-Iteration Homogeneous and Self-Dual Linear Programming Algorithm
- 1 February 1994
- journal article
- Published by Institute for Operations Research and the Management Sciences (INFORMS) in Mathematics of Operations Research
- Vol. 19 (1) , 53-67
- https://doi.org/10.1287/moor.19.1.53
Abstract
We present an O(√nL)-iteration homogeneous and self-dual linear programming (LP) algorithm. The algorithm possesses the following features: • It solves the linear programming problem without any regularity assumption concerning the existence of optimal, feasible, or interior feasible solutions. • It can start at any positive primal-dual pair, feasible or infeasible, near the central ray of the positive orthant (cone), and it does not use any big M penalty parameter or lower bound. • Each iteration solves a system of linear equations whose dimension is almost the same as that solved in the standard (primal-dual) interior-point algorithms. • If the LP problem has a solution, the algorithm generates a sequence that approaches feasibility and optimality simultaneously; if the problem is infeasible or unbounded, the algorithm will correctly detect infeasibility for at least one of the primal and dual problems.Keywords
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