Publication | Open Access
Approximate Constraint Satisfaction Requires Large LP Relaxations
58
Citations
25
References
2013
Year
Unknown Venue
Mathematical ProgrammingConstraint SolvingEngineeringConstraint SatisfactionMax CutComputational ComplexityComputer ScienceConstraint ProgrammingDiscrete MathematicsLinear ProgrammingCombinatorial OptimizationSuper-polynomial Lower BoundsApproximation TheoryLinear Programming RelaxationsOperations Research
We prove super-polynomial lower bounds on the size of linear programming relaxations for approximation versions of constraint satisfaction problems. We show that for these problems, polynomial-sized linear programs are exactly as powerful as programs arising from a constant number of rounds of the Sherali-Adams hierarchy. In particular, any polynomial-sized linear program for MAX CUT has an integrality gap of 1/2 and any such linear program for MAX 3-SAT has an integrality gap of 7/8.
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