articleDec 9, 2003Closed access

Gaussian Process Latent Variable Models for Visualisation of High Dimensional Data

University of Sheffield

Abstract

In this paper we introduce a new underlying probabilistic model for prin-cipal component analysis (PCA). Our formulation interprets PCA as a particular Gaussian process prior on a mapping from a latent space to the observed data-space. We show that if the prior’s covariance func-tion constrains the mappings to be linear the model is equivalent to PCA, we then extend the model by considering less restrictive covariance func-tions which allow non-linear mappings. This more general Gaussian pro-cess latent variable model (GPLVM) is then evaluated as an approach to the visualisation of high dimensional data for three different data-sets. Additionally our non-linear algorithm can be further kernelised leading to…

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Authors

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Topics & keywords

Keywords
  • Gaussian process
  • Covariance
  • Latent variable
  • Principal component analysis
  • Latent variable model
  • Kernel (algebra)
  • Computer science
  • Covariance function
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