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Mathematics / Mathematical optimization / Operations research / Geometry / Convex optimization / Lattice points / Computational number theory / Linear programming / Ellipsoid method / Leonid Khachiyan / Lattice reduction / LenstraLenstraLovsz lattice basis reduction algorithm
Date: 2012-07-25 10:24:41
Mathematics
Mathematical optimization
Operations research
Geometry
Convex optimization
Lattice points
Computational number theory
Linear programming
Ellipsoid method
Leonid Khachiyan
Lattice reduction
LenstraLenstraLovsz lattice basis reduction algorithm

51 Documenta Math. Linear Programming Stories

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