Graph explorer

Gaussian Process Networks

In this paper we address the problem of learning the structure of a Bayesian network in domains with continuous variables. This task requires a procedure for comparing different candidate structures. In the Bayesian framework, this is done by evaluating the {em marginal likelihood/} of the data given a candidate structure. This term can be computed in closed-form for standard parametric families (e.g., Gaussians), and can be approximated, at some computational cost, for some semi-parametric families (e.g., mixtures of Gaussians). We present a new family of continuous variable probabilistic networks that are based on {em Gaussian Process/} priors. These priors are semi-parametric in nature and can learn almost arbitrary noisy functional relations. Using these priors, we can directly compute marginal likelihoods for structure learning. The resulting method can discover a wide range of functional dependencies in multivariate data. We develop the Bayesian score of Gaussian Process Networks and describe how to learn them from data. We present empirical results on artificial data as well as on real-life domains with non-linear dependencies.

5 nodes5 linksoverview previewGaussian Process Networks
5 nodes5 links
Gaussian Process Networks5 visible / 5 total nodes / 6 links
Related contextCo-authorshipAuthorshipAuthorshipTopic signalTopic signalWGaussian Process Networkspreprint / 2013ANir FriedmanResearcherAIftach NachmanResearcherTMachine Learning49008 worksTArtificial Intelligence22915 works
PaperSignal 104 links

Gaussian Process Networks

preprint / 2013

Open