Manifold Parzen Windows
Vincent, Pascal, Bengio, Yoshua
–Neural Information Processing Systems
The similarity between objects is a fundamental element of many learning algorithms. Most nonparametric methods take this similarity to be fixed, but much recent work has shown the advantages of learning it, in particular to exploit the local invariances in the data or to capture the possibly nonlinear manifold on which most of the data lies. We propose a new nonparametric kernel density estimation method which captures the local structure of an underlying manifold through the leading eigenvectors of regularized local covariance matrices.
Neural Information Processing Systems
Dec-31-2003