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Branching on hyperplane methods for mixed integer linear and convex programming using adjoint lattices

机译:伴随格的混合整数线性和凸规划的超平面方法分支

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We present branching-on-hyperplane methods for solving mixed integer linear and mixed integer convex programs. In particular, we formulate the problem of finding a good branching hyperplane using a novel concept of adjoint lattice. We also reformulate the problem of rounding a continuous solution to a mixed integer solution. A worst case complexity of a Lenstra-type algorithm is established using an approximate log-barrier center to obtain an ellipsoidal rounding of the feasible set. The results for the mixed integer convex programming also establish a complexity result for the mixed integer second order cone programming and mixed integer semidefinite programming feasibility problems as a special case. Our results motivate an alternative reformulation technique and a branching heuristic using a generalized (e.g., ellipsoidal) norm reduced basis available at the root node.
机译:我们提出了超平面分支方法来求解混合整数线性和混合整数凸程序。特别是,我们提出了使用伴随晶格的新概念来寻找良好分支超平面的问题。我们还重新构造了将连续解四舍五入为整数整数解的问题。使用近似对数屏障中心建立Lenstra型算法的最坏情况复杂度,以获得可行集的椭圆舍入。混合整数凸规划的结果也建立了混合整数二阶锥规划和混合整数半定规划可行性问题的复杂性结果。我们的结果激发了一种替代的重构技术,并使用了根节点上可用的广义(例如,椭圆形)范数约简的基础进行启发式分支。

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