Title
DP-GP-LVM: A Bayesian Non-Parametric Model for Learning Multivariate Dependency Structures.
Abstract
We present a non-parametric Bayesian latent variable model capable of learning dependency structures across dimensions in a multivariate setting. Our approach is based on flexible Gaussian process priors for the generative mappings and interchangeable Dirichlet process priors to learn the structure. The introduction of the Dirichlet process as a specific structural prior allows our model to circumvent issues associated with previous Gaussian process latent variable models. Inference is performed by deriving an efficient variational bound on the marginal log-likelihood on the model.
Year
Venue
Field
2018
international conference on machine learning
Dirichlet process,Multivariate statistics,Inference,Latent variable model,Latent variable,Gaussian process,Artificial intelligence,Prior probability,Machine learning,Mathematics,Bayesian probability
DocType
Volume
Citations 
Journal
abs/1807.04833
0
PageRank 
References 
Authors
0.34
0
3
Name
Order
Citations
PageRank
Andrew Lawrence191.65
carl henrik ek232730.76
Neill D. F. Campbell330318.10