Clustering by latent dimensions
Abstract
This paper introduces a new clustering technique, called dimensional clustering, which clusters each data point by its latent pointwise dimension, which is a measure of the dimensionality of the data set local to that point. Pointwise dimension is invariant under a broad class of transformations. As a result, dimensional clustering can be usefully applied to a wide range of datasets. Concretely, we present a statistical model which estimates the pointwise dimension of a dataset around the points in that dataset using the distance of each point from its nth nearest neighbor. We demonstrate the applicability of our technique to the analysis of dynamical systems, images, and complex human movements.
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