2019
DOI: 10.20944/preprints201911.0381.v1
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Kernel Complexity for Nonparametric Distributions and Detection of Its Changes

Abstract: This paper addresses the issues of how we can quantify structural information for nonparametric distributions and how we can detect its changes. Structural information refers to an index for a global understanding of a data distribution. When we consider the problem of clustering using a parametric model such as a Gaussian mixture model, the number of mixture components (clusters) can be thought of as structural information in the model. However, there does not exist any notion of structural information for no… Show more

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