Directed Graphical Models

author: Cedric Archambeau, University College London
published: March 31, 2011,   recorded: February 2011,   views: 4611
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Description

In this talk I introduce the basic concepts of directed graphical models. I then introduce the EM algorithm and discuss learning in latent variable models, considering several mixture models (discrete latent variables), probabilistic PCA (continuous latent variables) and extensions. Next, I describe conditional models for regression, draw links to least squares and ridge regression. Finally, the talk is ended with an introduction to Gaussian process regression.

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Download slides icon Download slides: aibootcamp2011_archambeau_cgm.pdf (3.5 MB)


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