TY - GEN
T1 - Exact certification of global optimality of approximate factorizations via rationalizing sums-of-squares with floating point scalars
AU - Kaltofen, Erich
AU - Li, Bin
AU - Yang, Zhengfeng
AU - Zhi, Lihong
PY - 2008
Y1 - 2008
N2 - We generalize the technique by Peyrl and Parillo [Proc. SNC 2007] to computing lower bound certificates for several well-known factorization problems in hybrid symbolic-numeric computation. The idea is to transform a numerical sum-of-squares (SOS) representation of a positive polynomial into an exact rational identity. Our algorithms successfully certify accurate rational lower bounds near the irrational global optima for benchmark approximate polynomial greatest common divisors and multivariate polynomial irreducibility radii from the literature, and factor coefficient bounds in the setting of a model problem by Rump (up to n = 14, factor degree = 13). The numeric SOSes produced by the current fixed precision semi-definite programming (SDP) packages (SeDuMi, SOSTOOLS, YALMIP) are usually too coarse to allow successful projection to exact SOSes via Maple 11's exact linear algebra. Therefore, before projection we refine the SOSes by rank-preserving Newton iteration. For smaller problems the starting SOSes for Newton can be guessed without SDP ("SDP-free SOS"), but for larger inputs we additionally appeal to sparsity techniques in our SDP formulation.
AB - We generalize the technique by Peyrl and Parillo [Proc. SNC 2007] to computing lower bound certificates for several well-known factorization problems in hybrid symbolic-numeric computation. The idea is to transform a numerical sum-of-squares (SOS) representation of a positive polynomial into an exact rational identity. Our algorithms successfully certify accurate rational lower bounds near the irrational global optima for benchmark approximate polynomial greatest common divisors and multivariate polynomial irreducibility radii from the literature, and factor coefficient bounds in the setting of a model problem by Rump (up to n = 14, factor degree = 13). The numeric SOSes produced by the current fixed precision semi-definite programming (SDP) packages (SeDuMi, SOSTOOLS, YALMIP) are usually too coarse to allow successful projection to exact SOSes via Maple 11's exact linear algebra. Therefore, before projection we refine the SOSes by rank-preserving Newton iteration. For smaller problems the starting SOSes for Newton can be guessed without SDP ("SDP-free SOS"), but for larger inputs we additionally appeal to sparsity techniques in our SDP formulation.
KW - Approximate factorization
KW - Hybrid method
KW - Semidefinite programming
KW - Sum-of-squares
KW - Validated output
UR - https://www.scopus.com/pages/publications/57449108073
U2 - 10.1145/1390768.1390792
DO - 10.1145/1390768.1390792
M3 - 会议稿件
AN - SCOPUS:57449108073
SN - 9781595939043
T3 - Proceedings of the International Symposium on Symbolic and Algebraic Computation, ISSAC
SP - 155
EP - 163
BT - ISSAC'08
T2 - 21st Annual Meeting of the International Symposium on Symbolic Computation, ISSAC 2008
Y2 - 20 July 2008 through 23 July 2008
ER -