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Boolean Functions with Biased Inputs: Approximation and Noise Sensitivity

机译:具有偏置输入的布尔函数:逼近度和噪声灵敏度

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This paper considers the problem of approximating a Boolean function f using another Boolean function from a specified class. Two classes of approximating functions are considered: k-juntas, and linear Boolean functions. The n input bits of the function are assumed to be independently drawn from a distribution that may be biased. The quality of approximation is measured by the mismatch probability between f and the approximating function g. For each class, the optimal approximation and the associated mismatch probability is characterized in terms of the biased Fourier expansion of f. The technique used to analyze the mismatch probability also yields an expression for the noise sensitivity of f in terms of the biased Fourier coefficients, under a general i.i.d. input perturbation model.
机译:本文考虑了使用指定类中的另一个布尔函数逼近布尔函数f的问题。考虑了两类近似函数:k-juntas和线性布尔函数。假定该函数的n个输入位是从可能有偏差的分布中独立绘制的。近似的质量由f和近似函数g之间的不匹配概率来衡量。对于每个类别,均以f的有向傅立叶展开为特征来描述最佳逼近和相关的失配概率。在一般情况下,用于分析失配概率的技术还根据偏傅立叶系数得出f的噪声灵敏度表达式。输入扰动模型。

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