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Polynomial Learning of Distribution Families

机译:分销家庭多项式学习

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The question of polynomial learn ability of probability distributions, particularly Gaussian mixture distributions, has recently received significant attention in theoretical computer science and machine learning. However, despite major progress, the general question of polynomial learn ability of Gaussian mixture distributions still remained open. The current work resolves the question of polynomial learn ability for Gaussian mixtures in high dimension with an arbitrary fixed number of components. Specifically, we show that parameters of a Gaussian mixture distribution with fixed number of components can be learned using a sample whose size is polynomial in dimension and all other parameters. The result on learning Gaussian mixtures relies on an analysis of distributions belonging to what we call “polynomial families” in low dimension. These families are characterized by their moments being polynomial in parameters and include almost all common probability distributions as well as their mixtures and products. Using tools from real algebraic geometry, we show that parameters of any distribution belonging to such a family can be learned in polynomial time and using a polynomial number of sample points. The result on learning polynomial families is quite general and is of independent interest. To estimate parameters of a Gaussian mixture distribution in high dimensions, we provide a deterministic algorithm for dimensionality reduction. This allows us to reduce learning a high-dimensional mixture to a polynomial number of parameter estimations in low dimension. Combining this reduction with the results on polynomial families yields our result on learning arbitrary Gaussian mixtures in high dimensions.
机译:多项式学习概率分布能力,特别是高斯混合分布的问题,最近在理论计算机科学和机器学习中得到了重大关注。但是,尽管重大进展,高斯混合分配的多项式学会能力仍保持开放。目前的工作解决了多项式学习能力的高斯混合物在高尺寸中具有任意固定数量的组件。具体地,我们示出了可以使用大小在维度和所有其他参数中的多项式的样本来学习具有固定数量的组件的高斯混合分布的参数。学习高斯混合的结果依赖于对属于我们称之为低维的“多项式家庭”的分布分析。这些家庭的特征在于它们在参数中的多项式,包括几乎所有常见的概率分布以及它们的混合物和产品。使用Real代数几何的工具,我们表明属于这种家庭的任何分布的参数都可以在多项式时间内并使用多项式的采样点。学习多项式家庭的结果相当普遍,是独立的兴趣。为了估计高尺寸高斯混合分布的参数,我们提供了一种确定性算法,用于减少维度。这允许我们将高维混合物降低到低维中的参数估计的多项式数量。将这种降低与多项式家庭的结果相结合,产生了我们在高维中学习任意高斯混合物的结果。

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