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Moment-Matching Polynomials

机译:矩匹配多项式

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摘要

We give a new framework for proving the existence of low-degree, polynomial approximators for Boolean functions with respect to broad classes of non-product distributions. Our proofs use techniques related to the classical moment problem and deviate significantly from known Fourier-based methods, which require the underlying distribution to have some product structure. Our main application is the first polynomial-time algorithm for agnostically learning any function of a constant number of halfspaces with respect to any log-concave distribution (for any constant accuracy parameter). This result was not known even for the case of learning the intersection of two halfspaces without noise. Additionally, we show that in the "smoothed-analysis" setting, the above results hold with respect to distributions that have sub-exponential tails, a property satisfied by many natural and well-studied distributions in machine learning. Given that our algorithms can be implemented using Support Vector Machines (SVMs) with a polynomial kernel, these results give a rigorous theoretical explanation as to why many kernel methods work so well in practice
机译:我们提供了一个新的框架,用于证明布尔函数的低次多项式逼近器相对于非产品分布的广泛类而言是存在的。我们的证明使用与经典矩问题有关的技术,并且与已知的基于傅立叶的方法大不相同,后者需要基础分布具有某种产品结构。我们的主要应用是第一个多项式时间算法,该算法可从任意对数凹面分布(对于任何恒定精度参数)无知地学习恒定数目的半空间的任何函数。即使在没有噪声的情况下学习两个半空间的交集的情况,该结果也是未知的。此外,我们表明,在“平滑分析”设置中,上述结果相对于具有次指数尾部的分布成立,这是机器学习中许多自然且经过充分研究的分布所满足的特性。鉴于我们的算法可以使用支持向量机(SVM)和多项式内核来实现,因此这些结果对为何许多内核方法在实践中能如此有效地给出了严格的理论解释

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