18,176 research outputs found
A Comparison of Algorithms for Learning Hidden Variables in Normal Graphs
A Bayesian factor graph reduced to normal form consists in the
interconnection of diverter units (or equal constraint units) and
Single-Input/Single-Output (SISO) blocks. In this framework localized
adaptation rules are explicitly derived from a constrained maximum likelihood
(ML) formulation and from a minimum KL-divergence criterion using KKT
conditions. The learning algorithms are compared with two other updating
equations based on a Viterbi-like and on a variational approximation
respectively. The performance of the various algorithm is verified on synthetic
data sets for various architectures. The objective of this paper is to provide
the programmer with explicit algorithms for rapid deployment of Bayesian graphs
in the applications.Comment: Submitted for journal publicatio
- …