Efficient LP warmstarting for linear modifications of the constraint matrix

Abstract

We consider the problem of computing the optimal solution and objective of a linear program under linearly changing linear constraints. The problem studied is given by ct x s.t Ax + λ Dx ≤ b where λ belongs to a set of predefined values . Based on the information given by a precomputed basis, we present three efficient LP warm-starting algorithms. Each algorithm is either based on the eigenvalue decomposition, the Schur decomposition, or a tweaked eigenvalue decomposition to evaluate the optimal solution and optimal objective of these problems. The three algorithms have an overall complexity O(pm2+pmn) where m (resp. n) is the number of constraints (resp. variables) of the original problem and p the number of values in after an initial preprocessing step. We also provide theorems related to the optimality conditions to verify when a basis is still optimal and a local bound on the objective.

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