Goto

Collaborating Authors

 Canas, Guillermo


Learning Manifolds with K-Means and K-Flats

Neural Information Processing Systems

We study the problem of estimating a manifold from random samples. In particular, weconsider piecewise constant and piecewise linear estimators induced by k-means and k-flats, and analyze their performance. We extend previous results for k-means in two separate directions. First, we provide new results for k-means reconstruction on manifolds and, secondly, we prove reconstruction bounds for higher-order approximation (k-flats), for which no known results were previously available. While the results for k-means are novel, some of the technical tools are well-established in the literature. In the case of k-flats, both the results and the mathematical tools are new.


Learning Probability Measures with respect to Optimal Transport Metrics

Neural Information Processing Systems

We study the problem of estimating, in the sense of optimal transport metrics, a measure which is assumed supported on a manifold embedded in a Hilbert space. By establishing a precise connection between optimal transport metrics, optimal quantization, and learning theory, we derive new probabilistic bounds for the performance ofa classic algorithm in unsupervised learning (k-means), when used to produce a probability measure derived from the data. In the course of the analysis, we arrive at new lower bounds, as well as probabilistic upper bounds on the convergence rateof empirical to population measures, which, unlike existing bounds, are applicable to a wide class of measures.