Optimization over the Boolean Hypercube via Sums of Nonnegative Circuit Polynomials
February 27, 2018 Β· Declared Dead Β· π Foundations of Computational Mathematics
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Authors
Mareike Dressler, Adam Kurpisz, Timo de Wolff
arXiv ID
1802.10004
Category
cs.DS: Data Structures & Algorithms
Cross-listed
cs.CC,
math.AG,
math.OC
Citations
25
Venue
Foundations of Computational Mathematics
Last Checked
3 months ago
Abstract
Various key problems from theoretical computer science can be expressed as polynomial optimization problems over the boolean hypercube. One particularly successful way to prove complexity bounds for these types of problems are based on sums of squares (SOS) as nonnegativity certificates. In this article, we initiate the analysis of optimization problems over the boolean hypercube via a recent, alternative certificate called sums of nonnegative circuit polynomials (SONC). We show that key results for SOS based certificates remain valid: First, for polynomials, which are nonnegative over the $n$-variate boolean hypercube with constraints of degree $d$ there exists a SONC certificate of degree at most $n+d$. Second, if there exists a degree $d$ SONC certificate for nonnegativity of a polynomial over the boolean hypercube, then there also exists a short degree $d$ SONC certificate, that includes at most $n^{O(d)}$ nonnegative circuit polynomials.
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