Concentration of Random Feature Matrices in High-Dimensions

Zhijun Chen, Hayden Schaeffer, Rachel A. Ward
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引用次数: 4

Abstract

The spectra of random feature matrices provide essential information on the conditioning of the linear system used in random feature regression problems and are thus connected to the consistency and generalization of random feature models. Random feature matrices are asymmetric rectangular nonlinear matrices depending on two input variables, the data and the weights, which can make their characterization challenging. We consider two settings for the two input variables, either both are random variables or one is a random variable and the other is well-separated, i.e. there is a minimum distance between points. With conditions on the dimension, the complexity ratio, and the sampling variance, we show that the singular values of these matrices concentrate near their full expectation and near one with high-probability. In particular, since the dimension depends only on the logarithm of the number of random weights or the number of data points, our complexity bounds can be achieved even in moderate dimensions for many practical setting. The theoretical results are verified with numerical experiments.
高维随机特征矩阵的集中
随机特征矩阵的谱提供了用于随机特征回归问题的线性系统条件的基本信息,因此与随机特征模型的一致性和泛化有关。随机特征矩阵是依赖于两个输入变量(数据和权重)的非对称矩形非线性矩阵,这使得其表征具有挑战性。我们考虑两个输入变量的两种设置,要么都是随机变量,要么一个是随机变量,另一个是良好分离的,即点之间存在最小距离。在给定维数、复杂度比和抽样方差的条件下,我们证明了这些矩阵的奇异值集中在它们的满期望附近,并且高概率地集中在1附近。特别是,由于维度仅取决于随机权重数或数据点数的对数,因此在许多实际设置中,即使在中等维度中也可以实现我们的复杂性界限。通过数值实验验证了理论结果。
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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