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Gaussian Mixture Modeling with Gaussian Process Latent Variable Models

MPG-Autoren
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Nickisch,  H
Department Empirical Inference, Max Planck Institute for Biological Cybernetics, Max Planck Society;

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Rasmussen,  CE
Department Empirical Inference, Max Planck Institute for Biological Cybernetics, Max Planck Society;

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Zitation

Nickisch, H., & Rasmussen, C. (2010). Gaussian Mixture Modeling with Gaussian Process Latent Variable Models. Pattern Recognition: 32nd DAGM Symposium, 271-282.


Zitierlink: https://hdl.handle.net/11858/00-001M-0000-0013-BE68-A
Zusammenfassung
Density modeling is notoriously difficult for high dimensional data. One approach to the problem is to search for a lower dimensional manifold which captures the main characteristics of the data. Recently, the Gaussian Process Latent Variable Model (GPLVM) has successfully been used to find low dimensional manifolds in a variety of complex data. The GPLVM consists of a set of points in a low dimensional latent space, and a stochastic map to the observed space. We show how it can be interpreted as a density model in the observed space. However, the GPLVM is not trained as a density model and therefore yields bad density estimates. We propose a new training strategy and obtain improved generalisation performance and better density estimates in comparative evaluations on several benchmark data sets.