Expected Number of Iterations of Interior-Point Algorithms for Linear Programming
Abstract
We study the behavior of some polynomial interior-point algorithms for solving random linear programming (LP) problems. We show that the expected and anticipated number of iterations of these algorithms is bounded above by $O(n^{1.5})$. The random LP problem is Todd's probabilistic model with the Cauchy distribution.
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Expected Number of Iterations of Interior-Point Algorithms for Linear Programming. (2018). Journal of Computational Mathematics, 23(1), 93-100. https://gsp.tricubic.dev/JCM/article/view/11692