Polynomially Low Error PCPs with polyloglog n Queries via Modular Composition

STOC '15: Symposium on Theory of Computing Portland Oregon USA June, 2015(2015)

引用 16|浏览53
暂无评分
摘要
We show that every language in NP has a PCP verifier that tosses $O(\log n)$ random coins, has perfect completeness, and a soundness error of at most $1/\text{poly}(n)$, while making at most $O(\text{poly}\log\log n)$ queries into a proof over an alphabet of size at most $n^{1/\text{poly}\log\log n}$. Previous constructions that obtain $1/\text{poly}(n)$ soundness error used either $\text{poly}\log n $ queries or an exponential sized alphabet, i.e. of size $2^{n^c}$ for some $c>0$. Our result is an exponential improvement in both parameters simultaneously. Our result can be phrased as a polynomial-gap hardness for approximate CSPs with arity $\text{poly}\log\log n$ and alphabet size $n^{1/\text{poly}\log n}$. The ultimate goal, in this direction, would be to prove polynomial hardness for CSPs with constant arity and polynomial alphabet size (aka the sliding scale conjecture for inverse polynomial soundness error). Our construction is based on a modular generalization of previous PCP constructions in this parameter regime, which involves a composition theorem that uses an extra `consistency' query but maintains the inverse polynomial relation between the soundness error and the alphabet size. Our main technical/conceptual contribution is a new notion of soundness, which we refer to as {\em distributional soundness}, that replaces the previous notion of "list decoding soundness", and that allows us to prove a modular composition theorem with tighter parameters. This new notion of soundness allows us to invoke composition a super-constant number of times without incurring a blow-up in the soundness error.
更多
查看译文
关键词
PCPs,composition,sliding scale conjecture,decodable PCPs
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要