Probabilistic Inference with Generating Functions for Poisson Latent Variable Models
Winner, Kevin, Sheldon, Daniel R.
–Neural Information Processing Systems
Graphical models with latent count variables arise in a number of fields. Standard exact inference techniques such as variable elimination and belief propagation do not apply to these models because the latent variables have countably infinite support. As a result, approximations such as truncation or MCMC are employed. We present the first exact inference algorithms for a class of models with latent count variables by developing a novel representation of countably infinite factors as probability generating functions, and then performing variable elimination with generating functions. Our approach is exact, runs in pseudo-polynomial time, and is much faster than existing approximate techniques.
Neural Information Processing Systems
Feb-14-2020, 12:12:37 GMT