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Improved Direct Product Theorems for Randomized Query Complexity

机译:改进的直接乘积定理,提高了随机查询的复杂度

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The "direct product problem'''' is a fundamental question in complexity theory which seeks to understand how the difficulty of computing a function on each of k independent inputs scales with k. We prove the following direct product theorem (DPT) for query complexity: if every T$-query algorithmhas success probability at most 1 - eps in computing the Boolean function f on input distribution mu, then for alpha leq 1, every alpha eps Tk-query algorithm has success probability at most (2^{alpha eps}(1-eps))^k in computing the k-fold direct product f^{otimes k} correctly on k independent inputs from mu. In light of examples due to Shaltiel, this statement gives an essentially optimal tradeoff between the query bound and the error probability. Using this DPT, we show that for an absolute constant $alpha > 0$, the worst-case success probability of any $alpha R_2(f) k$-query randomized algorithm for f^{otimes k} falls exponentially with k. The best previous statement of this type, due to Klauck, v{S}palek, and de Wolf, required a query bound of O(bs(f) k). Our proof technique involves defining and analyzing a collection of martingales associated with an algorithm attempting to solve f^{otimes k}. Our method is quite general and yields a new XOR lemma and threshold DPT for the query model, as well as DPTs for the query complexity of learning tasks, search problems, and tasks involving interaction with dynamic entities. We also give a version of our DPT in which decision tree size is the resource of interest.
机译:“直接乘积问题”是复杂度理论中的一个基本问题,旨在理解如何在k个独立输入的每一个上计算函数的难度如何随k缩放。我们证明了以下针对查询复杂度的直接乘积定理(DPT) :如果在计算输入分布mu上的布尔函数f时,每个T $查询算法的成功概率最多为1-eps,那么对于alpha leq 1,每个alpha eps Tk查询算法的成功概率最多为(2 ^ {alpha eps }(1-eps))^ k正确计算来自mu的k个独立输入上的k倍直接乘积f ​​^ {otimes k}。使用该DPT,我们证明了对于绝对常数$ alpha> 0 $,对于f ^ {otimes k}的任何$ alpha R_2(f)k $查询随机算法,最坏情况的成功概率都将下降与k呈指数关系。由于Klau,这种类型的先前最佳陈述ck,v {S} palek和de Wolf,要求查询边界为O(bs(f)k)。我们的证明技术涉及定义和分析与尝试求解f ^ {otimesk}的算法相关的of的集合。我们的方法相当通用,可为查询模型生成新的XOR引理和阈值DPT,以及针对学习任务,搜索问题以及涉及与动态实体交互的任务的查询复杂性的DPT。我们还给出了DPT的一个版本,其中决策树的大小是我们关注的资源。

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