Inference in Ising Models
Abstract
The Ising spin glass is a one-parameter exponential family model for binary data with quadratic sufficient statistic. In this paper, we show that given a single realization from this model, the maximum pseudolikelihood estimate (MPLE) of the natural parameter is -consistent at a point whenever the log-partition function has order in a neighborhood of that point. This gives consistency rates of the MPLE for ferromagnetic Ising models on general weighted graphs in all regimes, extending the results of Chatterjee (2007) where only -consistency of the MPLE was shown. It is also shown that consistent testing, and hence estimation, is impossible in the high temperature phase in ferromagnetic Ising models on a converging sequence of simple graphs, which include the Curie--Weiss model. In this regime, the sufficient statistic is distributed as a weighted sum of independent random variables, and the asymptotic power of the most powerful test is determined. We also illustrate applications of our results on synthetic and real-world network data.
Cite
@article{arxiv.1507.07055,
title = {Inference in Ising Models},
author = {Bhaswar B. Bhattacharya and Sumit Mukherjee},
journal= {arXiv preprint arXiv:1507.07055},
year = {2017}
}
Comments
Revised. 33 pages, 4 figures, To appear in Bernoulli