Title :
PCPs via Low-Degree Long Code and Hardness for Constrained Hypergraph Coloring
Author :
Dinur, Irit ; Guruswami, Venkatesan
Author_Institution :
Dept. of Appl. Math & Comput. Sci., Weizmann Inst. of Sci., Rehovot, Israel
Abstract :
We develop new techniques to incorporate the recently proposed “short code” (a low-degree version of the long code) into the construction and analysis of PCPs in the classical “Label Cover + Fourier Analysis” framework. As a result, we obtain more size-efficient PCPs that yield improved hardness results for approximating CSPs and certain coloringtype problems. In particular, we show a hardness for a variant of hypergraph coloring (with hyperedges of size 6), with a gap between 2 and exp(2Ω(√log log N)) number of colors where N is the number of vertices. This is the first hardness result to go beyond the O(log N) barrier for a coloring-type problem. Our hardness bound is a doubly exponential improvement over the previously known O(log log N)-coloring hardness for 2-colorable hypergraphs, and an exponential improvement over the (logN)Ω(1)-coloring hardness for O(1)-colorable hypergraphs. Stated in terms of “covering complexity,” we show that for 6-ary Boolean CSPs, it is hard to decide if a given instance is perfectly satisfiable or if it requires more than 2Ω(√log log N) assignments for covering all of the constraints. While our methods do not yield a result for conventional hypergraph coloring due to some technical reasons, we also prove hardness of (log N)Ω(1)-coloring 2-colorable 6-uniform hypergraphs (this result relies just on the long code). A key algebraic result driving our analysis concerns a very low-soundness error testing method for Reed-Muller codes. We prove that if a function β : F2m → F2 is 2Ω(d) far in absolute distance from polynomials of degree m-d, then the probability that deg(βg) ≤ m-3d/4 for a random degree d/4 polynomial g is doubly exponentially small in d.
Keywords :
Boolean algebra; Fourier analysis; Reed-Muller codes; computational complexity; constraint satisfaction problems; graph colouring; polynomials; probability; 6-ary Boolean CSP; PCPs; Reed-Muller codes; colorable hypergraphs; coloring hardness; coloring-type problem; constrained hypergraph coloring; constraint satisfaction problems; covering complexity; doubly exponential improvement; hardness bound; label cover + Fourier analysis framework; low-degree long code; low-soundness error testing method; polynomials; probability; quasiNP-hardness; random degree; Approximation methods; Color; Computer science; Frequency modulation; Noise; Polynomials; Testing; Hardness of approximation; PCP; short code;
Conference_Titel :
Foundations of Computer Science (FOCS), 2013 IEEE 54th Annual Symposium on
Conference_Location :
Berkeley, CA
DOI :
10.1109/FOCS.2013.44