Nonlinear Markov Networks for Continuous Variables
Hofmann, Reimar, Tresp, Volker
–Neural Information Processing Systems
We address the problem oflearning structure in nonlinear Markov networks with continuous variables. This can be viewed as non-Gaussian multidimensional densityestimation exploiting certain conditional independencies in the variables. Markov networks are a graphical way of describing conditional independencieswell suited to model relationships which do not exhibit a natural causal ordering. We use neural network structures to model the quantitative relationships between variables.
Neural Information Processing Systems
Dec-31-1998