Normal-bundle Bootstrap

IF 1.9 Q1 MATHEMATICS, APPLIED
Ruda Zhang, R. Ghanem
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引用次数: 3

Abstract

Probabilistic models of data sets often exhibit salient geometric structure. Such a phenomenon is summed up in the manifold distribution hypothesis, and can be exploited in probabilistic learning. Here we present normal-bundle bootstrap (NBB), a method that generates new data which preserve the geometric structure of a given data set. Inspired by algorithms for manifold learning and concepts in differential geometry, our method decomposes the underlying probability measure into a marginalized measure on a learned data manifold and conditional measures on the normal spaces. The algorithm estimates the data manifold as a density ridge, and constructs new data by bootstrapping projection vectors and adding them to the ridge. We apply our method to the inference of density ridge and related statistics, and data augmentation to reduce overfitting.
法丛引导
数据集的概率模型通常表现出显著的几何结构。这种现象可以归纳为流形分布假设,并可以在概率学习中加以利用。在这里,我们提出了正态束bootstrap (NBB),一种生成保留给定数据集几何结构的新数据的方法。受流形学习算法和微分几何概念的启发,我们的方法将潜在的概率测度分解为在学习的数据流形上的边缘测度和在法向空间上的条件测度。该算法将数据流形估计为密度脊,通过自提投影向量并将其加到密度脊上构造新数据。我们将我们的方法应用于密度脊的推断和相关统计,以及数据增强以减少过拟合。
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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