A Tighter Bound for Graphical Models
Open Access
- 1 September 2001
- journal article
- Published by MIT Press in Neural Computation
- Vol. 13 (9) , 2149-2171
- https://doi.org/10.1162/089976601750399344
Abstract
We present a method to bound the partition function of a Boltzmann machine neural network with any odd-order polynomial. This is a direct extension of the mean-field bound, which is first order. We show that the third-order bound is strictly better than mean field. Additionally, we derive a third-order bound for the likelihood of sigmoid belief networks. Numerical experiments indicate that an error reduction of a factor of two is easily reached in the region where expansion-based approximations are useful.Keywords
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