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A note on the strong polynomiality of convex quadratic programming

Cited 1 time in Web of Science Cited 3 time in Scopus
Authors

Hong, Sung-Pil; Verma, Sushil

Issue Date
1995
Publisher
Springer Verlag
Citation
Mathematical Programming 68 (1995) 131-139
Keywords
Convex quadratic programmingStrong polynomialityNearest point problem on simplicial cone
Abstract
We prove that a general convex quadratic program (QP) can be reduced to the problem of finding the nearest point on a simplicial cone inO(n 3 +n logL) steps, wheren andL are, respectively, the dimension and the encoding length of QP. The proof is quite simple and uses duality and repeated perturbation. The implication, however, is nontrivial since the problem of finding the nearest point on a simplicial cone has been considered a simpler problem to solve in the practical sense due to its special structure. Also we show that, theoretically, this reduction implies that (i) if an algorithm solves QP in a polynomial number of elementary arithmetic operations that is independent of the encoding length of data in the objective function then it can be used to solve QP in strongly polynomial time, and (ii) ifL is bounded by a first order exponential function of n then (i) can be stated even in stronger terms: to solve QP in strongly polynomial time, it suffices to find an algorithm running in polynomial time that is independent of the encoding length of the quadratic term matrix or constraint matrix. Finally, based on these results, we propose a conjecture.
ISSN
0025-5610 (print)
1436-4646 (online)
Language
English
URI
https://hdl.handle.net/10371/5315
DOI
https://doi.org/10.1007/BF01585760

https://doi.org/10.1007/BF01585760
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