Zusammenfassung
The mean field approximation to the Ising model is a canonical variational
tool that is used for analysis and inference in Ising models. We provide a
simple and optimal bound for the KL error of the mean field approximation for
Ising models on general graphs, and extend it to higher order Markov random
fields. Our bound improves on previous bounds obtained in work in the graph
limit literature by Borgs, Chayes, Lovász, Sós, and Vesztergombi and
another recent work by Basak and Mukherjee. Our bound is tight up to lower
order terms. Building on the methods used to prove the bound, along with
techniques from combinatorics and optimization, we study the algorithmic
problem of estimating the (variational) free energy for Ising models and
general Markov random fields. For a graph $G$ on $n$ vertices and interaction
matrix $J$ with Frobenius norm $\| J \|_F$, we provide algorithms that
approximate the free energy within an additive error of $n \|J\|_F$ in
time $\exp(poly(1/\epsilon))$. We also show that approximation within $(n
\|J\|_F)^1-\delta$ is NP-hard for every $> 0$. Finally, we provide
more efficient approximation algorithms, which find the optimal mean field
approximation, for ferromagnetic Ising models and for Ising models satisfying
Dobrushin's condition.
Nutzer