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SIAMJO 2010
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Error Bounds for Some Semidefinite Programming Approaches to Polynomial Minimization on the Hypercube
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We consider the problem of minimizing a polynomial on the hypercube [0, 1]n and derive new error bounds for the hierarchy of semidefinite programming approximations to this problem corresponding to the Positivstellensatz of Schm
Etienne de Klerk, Monique Laurent
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Added
21 May 2011
Updated
21 May 2011
Type
Journal
Year
2010
Where
SIAMJO
Authors
Etienne de Klerk, Monique Laurent
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