Metric-Free Natural Gradient for Joint-Training of Boltzmann Machines

01/16/2013
by   Guillaume Desjardins, et al.
0

This paper introduces the Metric-Free Natural Gradient (MFNG) algorithm for training Boltzmann Machines. Similar in spirit to the Hessian-Free method of Martens [8], our algorithm belongs to the family of truncated Newton methods and exploits an efficient matrix-vector product to avoid explicitely storing the natural gradient metric L. This metric is shown to be the expected second derivative of the log-partition function (under the model distribution), or equivalently, the variance of the vector of partial derivatives of the energy function. We evaluate our method on the task of joint-training a 3-layer Deep Boltzmann Machine and show that MFNG does indeed have faster per-epoch convergence compared to Stochastic Maximum Likelihood with centering, though wall-clock performance is currently not competitive.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
12/12/2012

Joint Training of Deep Boltzmann Machines

We introduce a new method for training deep Boltzmann machines jointly. ...
research
03/20/2012

On Training Deep Boltzmann Machines

The deep Boltzmann machine (DBM) has been an important development in th...
research
01/16/2013

Revisiting Natural Gradient for Deep Networks

We evaluate natural gradient, an algorithm originally proposed in Amari ...
research
07/07/2015

Wasserstein Training of Boltzmann Machines

The Boltzmann machine provides a useful framework to learn highly comple...
research
06/14/2019

Empirical Bayes Method for Boltzmann Machines

In this study, we consider an empirical Bayes method for Boltzmann machi...
research
12/09/2022

Attention in a family of Boltzmann machines emerging from modern Hopfield networks

Hopfield networks and Boltzmann machines (BMs) are fundamental energy-ba...
research
07/09/2020

Training Restricted Boltzmann Machines with Binary Synapses using the Bayesian Learning Rule

Restricted Boltzmann machines (RBMs) with low-precision synapses are muc...

Please sign up or login with your details

Forgot password? Click here to reset