Elementary polytopes with high lift-and-project ranks for strong positive semidefinite operators

نویسندگان

  • Yu Hin Au
  • Levent Tunçel
چکیده

We consider operators acting on convex subsets of the unit hypercube. These operators are used in constructing convex relaxations of combinatorial optimization problems presented as a 0,1 integer programming problem or a 0,1 polynomial optimization problem. Our focus is mostly on operators that, when expressed as a lift-and-project operator, involve the use of semidefiniteness constraints in the lifted space, including operators due to Lasserre and variants of the Sherali–Adams and Bienstock–Zuckerberg operators. We study the performance of these semidefinite-optimization-based lift-and-project operators on some elementary polytopes — hypercubes that are chipped (at least one vertex of the hypercube removed by intersection with a closed halfspace) or cropped (all 2 vertices of the hypercube removed by intersection with 2 closed halfspaces) to varying degrees of severity ρ. We prove bounds on ρ where these operators would perform badly on the aforementioned examples. We also show that the integrality gap of the chipped hypercube is invariant under the application of several lift-and-project operators of varying strengths.

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عنوان ژورنال:
  • Discrete Optimization

دوره 27  شماره 

صفحات  -

تاریخ انتشار 2018