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Large Deviation Bounds for Decision Trees and Sampling Lower Bounds for AC0-circuits

机译:决策树的大偏差范围和AC0电路的下限采样

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There has been considerable interest lately in the complexity of distributions. Recently, Lovett and Viola (CCC 2011) showed that the statistical distance between a uniform distribution over a good code, and any distribution which can be efficiently sampled by a small bounded-depth AC0 circuit, is inverse-polynomially close to one. That is, such distributions are very far from each other. We strengthen their result, and show that the distance is in fact exponentially close to one. This allows us to strengthen the parameters in their application for data structure lower bounds for succinct data structures for codes. From a technical point of view, we develop new large deviation bounds for functions computed by small depth decision trees, which we then apply to obtain bounds for AC0 circuits via the switching lemma. We show that if such functions are Lipschitz on average in a certain sense, then they are in fact Lipschitz almost everywhere. This type of result falls into the extensive line of research which studies large deviation bounds for the sum of random variables, where while not independent, exhibit large deviation bounds similar to these obtained by independent random variables.
机译:最近,人们对分布的复杂性产生了极大的兴趣。最近,Lovett和Viola(CCC 2011)表明,良好代码上的均匀分布与可以由小深度AC0电路有效采样的任何分布之间的统计距离,在多项式上都近似为1。也就是说,这样的分布彼此相距很远。我们加强了他们的结果,并表明距离实际上成倍地接近一。这使我们可以在代码的简洁数据结构的数据结构下限中增强其应用程序中的参数。从技术角度来看,我们为由小深度决策树计算的函数开发了新的大偏差范围,然后将其应用于通过切换引理获得AC0电路的范围。我们证明,如果从某种意义上说,这些功能平均来说是Lipschitz,那么实际上它们几乎遍布Lipschitz。这种类型的结果属于广泛的研究范围,该研究针对随机变量的总和研究大偏差范围,其中虽然不是独立的,但显示出的大偏差范围类似于通过独立随机变量获得的偏差范围。

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