Part of Advances in Neural Information Processing Systems 25 (NIPS 2012)
Guillermo Canas, Tomaso Poggio, Lorenzo Rosasco
We study the problem of estimating a manifold from random samples. In particular, we consider 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.