Neural Networks
Author(s)
Jordan, Michael I.; Bishop, Christopher M.
DownloadAIM-1562.ps (363.6Kb)
Additional downloads
Metadata
Show full item recordAbstract
We present an overview of current research on artificial neural networks, emphasizing a statistical perspective. We view neural networks as parameterized graphs that make probabilistic assumptions about data, and view learning algorithms as methods for finding parameter values that look probable in the light of the data. We discuss basic issues in representation and learning, and treat some of the practical issues that arise in fitting networks to data. We also discuss links between neural networks and the general formalism of graphical models.
Date issued
1996-03-13Other identifiers
AIM-1562
CBCL-131
Series/Report no.
AIM-1562CBCL-131
Keywords
AI, MIT, Artificial Intelligence, neural networks, learning, graphical models, machine learning, pattern recognition, statistical learning theory