Inference in Markov Blanket Networks (2000)

by Reimar Hofmann
Citations:2 - 0 self

Active Bibliography

and Multi-modal Relationships Between Observed Variables Measuring Growth-oriented Atmosphere – P. Nokelainen, T. Silander, P. Ruohotie, H. Tirri
TABLE OF CONTENTS – Parichey Gandhi, Vasant Honavar, Arka P. Ghosh
1 Learning Dynamic Bayesian Network Models Via Cross-Validation – Jose M. Peña, Johan Björkegren, Jesper Tegnér
17 Learning with Mixtures of Trees – Marina Meila-Predoviciu - 1999
17 Efficient markov network structure discovery using independence tests – Facundo Bromberg, Dimitris Margaritis, Vasant Honavar - 2006
Preprint; final version will appear in the Computational Intelligence journal in 2009. Efficient Markov Network Discovery Using Particle Filters – Dimitris Margaritis, Facundo Bromberg
3 Efficient Markov Network Discovery Using Particle Filters – Dimitris Margaritis, Facundo Bromberg
40 Mixtures of Gaussian processes – Volker Tresp - 2001
43 Optimization by learning and simulation of Bayesian and Gaussian networks – P. Larrañaga, R. Etxeberria, J. A. Lozano, J.M. Peña, J. M. Pe~na - 1999
Input Selection Based on an Ensemble – Pierre Van De Laar, Tom Heskes - 2000
2 Variational inference for continuous sigmoidal Bayesian networks – Brendan J. Frey - 1996
3 Fast Factored Density Estimation and Compression with Bayesian Networks – Scott Davies, John Lafferty - 2002
Approaches to the Network-Optimal Partition Problem for fMRI Data – Benjamin Yackley, Terran Lane
6 Representing Probabilistic Rules with Networks of Gaussian Basis Functions – Volker Tresp, Jürgen Hollatz, Subutai Ahmad - 1995
4 Short-Term Load Forecasting in Air-Conditioned Non-Residential Buildings – Yoseba K. Penya, Cruz E. Borges, Denis Agote, Iván Fernández - 2011
7 Mix-nets: Factored Mixtures of Gaussians in Bayesian Networks with Mixed Continuous And Discrete Variables – Scott Davies, Andrew Moore - 2000
Learning Ensembles of Continuous Bayesian Networks: An Application to Rainfall Prediction – Scott Hellman, Amy Mcgovern, Ming Xue
4 Multi-View 3-D Object Description with Uncertain Reasoning and Machine Learning – Zuwhan Kim - 2001
6 Learning Bayesian belief networks with neural network estimators – Stefano Monti, Gregory F. Cooper - 1997