Sign in

username:

password:



Not a member?

Search documents



Search tips

Documents by category

Ads

DSP Documents > Learning Algorithms for Neural Networks.

In this section, our goal is to keep a comprehensive and organised list of DSP related documents (papers, theses, etc) available for free on the web. Most of the documents are available in pdf format, so you'll need a pdf reader to view them. Add a document to the list.

To narrow the list, you can filter the documents by 'type':
All Types | Master Theses | Others | Papers/Articles | PhD Theses 

Page of Sorted by

Learning Algorithms for Neural Networks.

By Amir Atiya

Abstract:

This thesis deals mainly with the development of new learning algorithms and the study of the dynamics of neural networks. We develop a method for training feedback neural networks. Appropriate stability conditions are derived, and learning is performed by the gradient descent technique. We develop a new associative memory model using Hopfield's continuous feedback network. We demonstrate some of the storage limitations of the Hopfield network, and develop alternative architectures and an algorithm for designing the associative memory. We propose a new unsupervised learning method for neural networks. The method is based on applying repeatedly the gradient ascent technique on a defined criterion function. We study some of the dynamical aspects of Hopfield networks. New stability results are derived. Oscillations and synchronizations in several architectures are studied, and related to recent findings in biology. The problem of recording the outputs of real neural networks is considered. A new method for the detection and the recognition of the recorded neural signals is proposed.

Download Document Download Document
(This item is protected by original copyright)

Rate this document:
0
Rating: 0 | Votes: 0


Comments


No comments yet for this document


Add a Comment
You need to login before you can post a comment (best way to prevent spam). ( Not a member? )