Fast Exact Inference for Recursive Cardinality Models
Tarlow, Daniel, Swersky, Kevin, Zemel, Richard S., Adams, Ryan Prescott, Frey, Brendan J.
Cardinality potentials are a generally useful class of high order potential that affect probabilities based on how many of D binary variables are active. Maximum a posteriori (MAP) inference for cardinality potential models is well-understood, with efficient computations taking O(DlogD) time. Yet efficient marginalization and sampling have not been addressed as thoroughly in the machine learning community. We show that there exists a simple algorithm for computing marginal probabilities and drawing exact joint samples that runs in O(Dlog2 D) time, and we show how to frame the algorithm as efficient belief propagation in a low order tree-structured model that includes additional auxiliary variables. We then develop a new, more general class of models, termed Recursive Cardinality models, which take advantage of this efficiency. Finally, we show how to do efficient exact inference in models composed of a tree structure and a cardinality potential. We explore the expressive power of Recursive Cardinality models and empirically demonstrate their utility.
Oct-16-2012
- Country:
- North America > Canada > Ontario > Toronto (0.14)
- Genre:
- Research Report > New Finding (0.46)
- Technology: