使用代码的低次伪布尔函数恢复

Orhan Ocal, S. Kadhe, K. Ramchandran
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引用次数: 4

摘要

伪布尔函数是输入变量为二进制,输出为实数的函数。这些功能出现在计算机科学、金融和经济学等许多不同的应用中。伪布尔函数是一种谱表示,它与信号处理中的沃尔什-阿达玛变换密切相关。在某些问题中,谱表示的系数仅在低次项上有效。在这项工作中,我们提出了一种计算效率高的方法来恢复这些低次系数。我们的方法是基于在码本的码字给出的点处计算输入伪布尔函数,然后对结果信号执行Walsh-Hadamard变换。具有高比率和良好的最小距离属性的代码产生的评估点集的大小接近于低次系数的数量。特别是完美的代码,如Hamming代码或Golay代码,可以通过最优的函数求值次数实现有效的恢复。
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Low-degree Pseudo-Boolean Function Recovery Using Codes
Pseudo-Boolean functions are functions whose input variables are binary and output is in the real numbers. These functions show up in many different applications in computer science, finance and economics to name a few. Pseudo-Boolean functions lend themselves to a spectral representation, which is closely related to the Walsh-Hadamard Transform from signal processing. In some problems, the coefficients of the spectral representation are active only on the low-degree terms. In this work, we present a method for computationally-efficient recovery of these low-degree coefficients. Our method is based on evaluating the input pseudo-Boolean function at points given by the codewords of a codebook, and then performing a Walsh-Hadamard Transform on the resulting signal. Codes having high rates and good minimum distance properties yield sets of evaluations points whose size is close to the number of low-degree coefficients. In particular perfect codes, such as Hamming Codes or the Golay Code, enable efficient recovery with optimal number of evaluations of the function.
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