Applications where Radial Basis and Probabilistic Neural Networks are successful respectively?

1 view (last 30 days)
Can someone please explain the application areas of Radial Basis and Probabilistic Neural Networks? I mean How to identify where a particular network is successful? I am calculating feature vectors through different techniques. Some are giving results with RBFs while others with PNNs. I am not able to identify reasons for the same.
Thank you

Accepted Answer

Greg Heath
Greg Heath on 20 Feb 2014
Use RBFs. Like MLPs, under some conditions, they are universal approximators.
I consider PNNs to be a special case of an RBF.
MATLAB's version of an RBF has two nagging defaults.
1. You cannot specify a starting configuration of hidden nodes.
2. All of the hidden layer transfer function are spherical with the same specified radius.
Some generalizations that could be incorporated using the proximity to other classes
a. Different radii
b. Different coordinate aligned ellipses
Hope this helps.
Thank you for formally accepting my answer
Greg
  2 Comments
Geetika
Geetika on 20 Feb 2014
Thank you very much for your reply. But how can one determine under what situations RBFs or PNNs will be useful? I mean like I am applying these on feature vectors. So, What should be the characteristics of feature vectors to determine this?
Greg Heath
Greg Heath on 23 Feb 2014
As I said above,
1. RBFs are universal approximators.
2. I consider PNNs as a special case of RBFs.
3.I have no use for PNNs.
HTH
Greg

Sign in to comment.

More Answers (0)

Categories

Find more on Sequence and Numeric Feature Data Workflows in Help Center and File Exchange

Tags

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!