2020
DOI: 10.48550/arxiv.2007.13869
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Normal-bundle Bootstrap

Ruda Zhang,
Roger Ghanem

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 lear… Show more

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