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Computational depth: Concept and applications

机译:计算深度:概念与应用

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We introduce Computational Depth, a measure for the amount of "nonrandom" or "useful" information in a string by considering the difference of various Kolmogorov complexity measures. We investigate three instantiations of Computational Depth: Basic Computational Depth, a clean notion capturing the spirit of Bennett's Logical Depth. We show that a Turing machine M runs in time polynomial on average over the time-bounded universal distribution if and only if for all inputs x, M uses time exponential in the basic computational depth of x. Sublinear-time Computational Depth and the resulting concept of Shallow Sets, a generalization of sparse and random sets based on low depth properties of their characteristic sequences. We show that every computable set that is reducible to a shallow set has polynomial-size circuits. Distinguishing Computational Depth, measuring when strings are easier to recognize than to produce. We show that if a Boolean formula has a nonnegligible fraction of its satisfying assignments with low depth, then we can find a satisfying assignment efficiently.
机译:我们介绍了计算深度,它是通过考虑各种Kolmogorov复杂性度量的差异来衡量字符串中“非随机”或“有用”信息量的度量。我们研究了计算深度的三个实例:基本计算深度,这是一个清晰的概念,它体现了贝内特逻辑深度的精神。我们表明,当且仅当对于所有输入x,M在x的基本计算深度中使用时间指数时,图灵机M才在有时间限制的通用分布上平均以时间多项式运行。亚线性时间计算深度以及由此产生的“浅集”概念,这是基于稀疏和随机集特征序列的低深度特性的泛化。我们表明,每个可归结为浅集的可计算集都有多项式大小的电路。区分计算深度,测量何时比创建字符串更容易识别字符串。我们证明,如果布尔公式在其满意的分配中具有不可忽略的分数且深度很低,那么我们可以有效地找到满意的分配。

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