Dynamic Bayesian Networks with Deterministic Latent Tables
–Neural Information Processing Systems
The application of latent/hidden variable Dynamic Bayesian Networks isconstrained by the complexity of marginalising over latent variables. For this reason either small latent dimensions or Gaussian latentconditional tables linearly dependent on past states are typically considered in order that inference is tractable. We suggest an alternative approach in which the latent variables are modelled using deterministic conditional probability tables.
Neural Information Processing Systems
Dec-31-2003