Uniform consistency in nonparametric mixture models

Bryon Aragam, Ruiyi Yang
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引用次数: 4

Abstract

We study uniform consistency in nonparametric mixture models as well as closely related mixture of regression (also known as mixed regression) models, where the regression functions are allowed to be nonparametric and the error distributions are assumed to be convolutions of a Gaussian density. We construct uniformly consistent estimators under general conditions while simultaneously highlighting several pain points in extending existing pointwise consistency results to uniform results. The resulting analysis turns out to be nontrivial, and several novel technical tools are developed along the way. In the case of mixed regression, we prove $L^1$ convergence of the regression functions while allowing for the component regression functions to intersect arbitrarily often, which presents additional technical challenges. We also consider generalizations to general (i.e. non-convolutional) nonparametric mixtures.
非参数混合模型的均匀一致性
我们研究非参数混合模型以及密切相关的混合回归(也称为混合回归)模型中的均匀一致性,其中回归函数允许是非参数的,并且假设误差分布是高斯密度的卷积。我们在一般条件下构造一致一致的估计量,同时强调了将现有的点一致结果扩展到一致结果的几个难点。由此产生的分析结果是非平凡的,并且在此过程中开发了一些新的技术工具。在混合回归的情况下,我们证明了回归函数的$L^1$收敛性,同时允许组件回归函数经常任意相交,这提出了额外的技术挑战。我们还考虑一般(即非卷积)非参数混合的推广。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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