Colored Maximum Variance Unfolding
Song, Le, Gretton, Arthur, Borgwardt, Karsten, Smola, Alex J.
–Neural Information Processing Systems
Maximum variance unfolding (MVU) is an effective heuristic for dimensionality reduction. It produces a low-dimensional representation of the data by maximizing the variance of their embeddings while preserving the local distances of the original data. We show that MVU also optimizes a statistical dependence measure which aims to retain the identity of individual observations under the distancepreserving constraints. This general view allows us to design "colored" variants of MVU, which produce low-dimensional representations for a given task, e.g.
Neural Information Processing Systems
Dec-31-2008
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