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A review on Gaussian Process Latent Variable Models
Author(s) -
Ping Li,
Songcan Chen
Publication year - 2016
Publication title -
caai transactions on intelligence technology
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.613
H-Index - 15
eISSN - 2468-6557
pISSN - 2468-2322
DOI - 10.1016/j.trit.2016.11.004
Subject(s) - latent variable , computer science , gaussian process , artificial intelligence , machine learning , latent variable model , data mining , kernel (algebra) , process (computing) , parametric statistics , relation (database) , variable (mathematics) , pattern recognition (psychology) , gaussian , mathematics , statistics , mathematical analysis , physics , quantum mechanics , operating system , combinatorics
Gaussian Process Latent Variable Model (GPLVM), as a flexible bayesian non-parametric modeling method, has been extensively studied and applied in many learning tasks such as Intrusion Detection, Image Reconstruction, Facial Expression Recognition, Human pose estimation and so on. In this paper, we give a review and analysis for GPLVM and its extensions. Firstly, we formulate basic GPLVM and discuss its relation to Kernel Principal Components Analysis . Secondly, we summarize its improvements or variants and propose a taxonomy of GPLVM related models in terms of the various strategies that be used. Thirdly, we provide the detailed formulations of the main GPLVMs that extensively developed based on the strategies described in the paper. Finally, we further give some challenges in next researches of GPLVM.

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