Journal of the Operations Research Society of China ›› 2013, Vol. 1 ›› Issue (3): 313-332.doi: 10.1007/s40305-013-0017-8
• Continuous Optimization • Previous Articles Next Articles
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Abstract:
Suppose f, g1, ··· ,gm are multivariate polynomials in x ∈ Rn and their degrees are at most 2d. Consider the problem: Minimize f (x) subject to g1(x) 0, ··· ,gm(x) 0. Let fmin (resp., fmax) be the minimum (resp., maximum) of f on the feasible set S, and fsos be the lower bound of fmin given by Lasserre’s relaxation of order d. This paper studies its approximation bound. Under a suitable condition on g1, ··· ,gm, we prove that (fmax −fsos) Q(fmax − fmin) with Q a constant depending only on g1, ··· ,gm but not on f . In particular, if S is the unit ball, Q = O(nd ); if S is the hypercube, Q = O(n2d ); if S is the boolean set, Q= O(nd ).
Key words: Approximation bound , Lasserre’s relaxation , Polynomials , Semidefinite programming , Sum of squares
Jia-Wang Nie. An Approximation Bound Analysis for Lasserre’s Relaxation in Multivariate Polynomial Optimization[J]. Journal of the Operations Research Society of China, 2013, 1(3): 313-332.
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URL: https://www.jorsc.shu.edu.cn/EN/10.1007/s40305-013-0017-8
https://www.jorsc.shu.edu.cn/EN/Y2013/V1/I3/313