Using Recurrent Networks for Dimensionality Reduction

Item

Title
en_US Using Recurrent Networks for Dimensionality Reduction
Creator
en_US Jones, Michael J.
Date
2004-10-20T20:23:37Z
Date Available
2004-10-20T20:23:37Z
Date Issued
en_US 1992-09-01
Identifier
en_US AITR-1396
Abstract
en_US This report explores how recurrent neural networks can be exploited for learning high-dimensional mappings. Since recurrent networks are as powerful as Turing machines, an interesting question is how recurrent networks can be used to simplify the problem of learning from examples. The main problem with learning high-dimensional functions is the curse of dimensionality which roughly states that the number of examples needed to learn a function increases exponentially with input dimension. This thesis proposes a way of avoiding this problem by using a recurrent network to decompose a high-dimensional function into many lower dimensional functions connected in a feedback loop.
Extent
2167097 bytes
1325986 bytes
Format
application/postscript
application/pdf
Language
en_US
Relation
en_US AITR-1396