Abstract
When we apply the affine scaling algorithm to a linear program, we usually construct an artificial linear program having an interior feasible solution from which the algorithm starts. The artificial linear program involves a positive number called the bigℳ. Theoretically, there exists anℳ * such that the original problem to be solved is equivalent to the artificial linear program ifℳ >ℳ *. Practically, however, such anℳ * is unknown and a safe estimate ofℳ is often too large. This paper proposes a method of updatingℳ to a suitable value during the iteration of the affine scaling algorithm. Asℳ becomes large, the method gives information on infeasibility of the original problem or its dual.
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This paper is dedicated to Phil Wolfe on the occasion of his 65th birthday.
Supported by Grant-in-Aids for Co-Operative Research (03832017) of the Japan Ministry of Education, Science and Culture.
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Ishihara, T., Kojima, M. On the bigℳ in the affine scaling algorithm. Mathematical Programming 62, 85–93 (1993). https://doi.org/10.1007/BF01585161
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DOI: https://doi.org/10.1007/BF01585161