Clamping Variables and Approximate Inference
Abstract
It was recently proved using graph covers (Ruozzi, 2012) that the Bethe partition function is upper bounded by the true partition function for a binary pairwise model that is attractive. Here we provide a new, arguably simpler proof from first principles. We make use of the idea of clamping a variable to a particular value. For an attractive model, we show that summing over the Bethe partition functions for each sub-model obtained after clamping any variable can only raise (and hence improve) the approximation. In fact, we derive a stronger result that may have other useful implications. Repeatedly clamping until we obtain a model with no cycles, where the Bethe approximation is exact, yields the result. We also provide a related lower bound on a broad class of approximate partition functions of general pairwise multi-label models that depends only on the topology. We demonstrate that clamping a few wisely chosen variables can be of practical value by dramatically reducing approximation error.
Cite
Text
Weller and Jebara. "Clamping Variables and Approximate Inference." Neural Information Processing Systems, 2014.Markdown
[Weller and Jebara. "Clamping Variables and Approximate Inference." Neural Information Processing Systems, 2014.](https://mlanthology.org/neurips/2014/weller2014neurips-clamping/)BibTeX
@inproceedings{weller2014neurips-clamping,
title = {{Clamping Variables and Approximate Inference}},
author = {Weller, Adrian and Jebara, Tony},
booktitle = {Neural Information Processing Systems},
year = {2014},
pages = {909-917},
url = {https://mlanthology.org/neurips/2014/weller2014neurips-clamping/}
}