Abstract
In this note, we show that exponentially deep belief networks can approximate any distribution over binary vectors to arbitrary accuracy, even when the width of each layer is limited to the dimensionality of the data. We further show that such networks can be greedily learned in an easy yet impractical way.
Issue Section:
Note
This content is only available as a PDF.
© 2008 Massachusetts Institute of Technology
2008
You do not currently have access to this content.