MLMGSTSep 15, 2015

The Shape of Data and Probability Measures

arXiv:1509.04632v22 citations
Originality Incremental advance
AI Analysis

This work addresses the challenge of extracting shape from data for applications like manifold clustering, representing an incremental advancement in localized covariance methods.

The paper tackles the problem of analyzing data shape by introducing multiscale covariance tensor fields (CTF) to quantify local variation at all spatial scales, proving stability and convergence results, and applying CTFs to manifold clustering with experimental validation.

We introduce the notion of multiscale covariance tensor fields (CTF) associated with Euclidean random variables as a gateway to the shape of their distributions. Multiscale CTFs quantify variation of the data about every point in the data landscape at all spatial scales, unlike the usual covariance tensor that only quantifies global variation about the mean. Empirical forms of localized covariance previously have been used in data analysis and visualization, but we develop a framework for the systematic treatment of theoretical questions and computational models based on localized covariance. We prove strong stability theorems with respect to the Wasserstein distance between probability measures, obtain consistency results, as well as estimates for the rate of convergence of empirical CTFs. These results ensure that CTFs are robust to sampling, noise and outliers. We provide numerous illustrations of how CTFs let us extract shape from data and also apply CTFs to manifold clustering, the problem of categorizing data points according to their noisy membership in a collection of possibly intersecting, smooth submanifolds of Euclidean space. We prove that the proposed manifold clustering method is stable and carry out several experiments to validate the method.

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