Validated Infeasible Interior-Point Predictor–Corrector Methods for Linear Programming |
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Authors: | Ismail I. Idriss Wolfgang V. Walter |
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Affiliation: | 1. Institute for Applied Research, University of Applied Sciences, FH Konstanz, D-78405, Konstanz, Germany 2. Institute of Scientific Computing, Dresden University of Technology, D-01062, Dresden, Germany
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Abstract: | ![]() Many problems arising in practical applications lead to linear programming problems. Hence, they are fundamentally tractable. Recent interior-point methods can exploit problem structure to solve such problems very efficiently. Infeasible interior-point predictor–corrector methods using floating-point arithmetic sometimes compute an approximate solution with duality gap less than a given tolerance even when the problem may not have a solution. We present an efficient verification method for solving linear programming problems which computes a guaranteed enclosure of the optimal solution and which verifies the existence of the solution within the computed interval. |
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