Recent works have demonstrated that the convergence rate of a nonparametric density estimator can be greatly improved by using a low-rank estimator when the target density is a convex combination of separable probability densities with Lipschitz continuous marginals, i.e. a multiview model. However, this assumption is very restrictive and it is not clear to what degree these findings can be extended to general pdfs. This work answers this question by introducing a new way of characterizing a pdf's complexity, the non-negative Lipschitz spectrum (NL-spectrum), which, unlike smoothness properties, can be used to characterize virtually any pdf. Finite sample bounds are presented that are dependent on the target density's NL-spectrum. From this dimension-independent rates of convergence are derived that characterize when an NL-spectrum allows for a fast rate of convergence.
翻译:最近的工作表明,如果目标密度是利普西茨连续边缘(即多视图模型)的分概率密度组合,则使用低级估计值可以大大提高非对称密度估计值的趋同率。然而,这一假设非常严格,不清楚这些结果在多大程度上可以扩展到一般pdf。这项工作通过引入一种新的方法来描述pdf的复杂性,即非负性的利普西茨频谱(NL-spectrum),可以用来描述几乎所有的pdf。提出了取决于目标密度NL-spectrum的精细抽样界限。从这一维度的趋同率中可以得出在NL-spectrum允许快速趋同时的趋同率。