Efficient Exact Inference in Planar Ising Models
Schraudolph, Nicol N., Kamenetsky, Dmitry
–Neural Information Processing Systems
We present polynomial-time algorithms for the exact computation of lowest- energy states, worst margin violators, partition functions, and marginals in binary undirected graphical models. Our approach provides an interesting alternative to the well-known graph cut paradigm in that it does not impose any submodularity constraints; instead we require planarity to establish a correspondence with perfect matchings in an expanded dual graph. Maximum-margin parameter estimation for a boundary detection task shows our approach to be efficient and effective.
Neural Information Processing Systems
Dec-31-2009