articleDec 1, 2005Closed access

Probabilistic Non-linear Principal Component Analysis with Gaussian Process Latent Variable Models

University of Sheffield

Abstract

Summarising a high dimensional data set with a low dimensional embedding is a standard approach for exploring its structure. In this paper we provide an overview of some existing techniques for discovering such embeddings. We then introduce a novel probabilistic interpretation of principal component analysis (PCA) that we term dual probabilistic PCA (DPPCA). The DPPCA model has the additional advantage that the linear mappings from the embedded space can easily be nonlinearised through Gaussian processes. We refer to this model as a Gaussian process latent variable model (GP-LVM). Through analysis of the GP-LVM objective function, we relate the model to popular spectral techniques such as kernel PCA and…

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953
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Authors

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Topics & keywords

Keywords
  • Principal component analysis
  • Probabilistic logic
  • Gaussian process
  • Computer science
  • Latent variable
  • Probabilistic latent semantic analysis
  • Kernel principal component analysis
  • Kernel (algebra)
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