newpnn
Design probabilistic neural network
Syntax
net = newpnn(P,T,spread)
Description
Probabilistic neural networks (PNN) are a kind of radial basis network suitable for classification problems.
net = newpnn(P,T,spread)
takes two or three arguments,
P |
|
T |
|
spread | Spread of radial basis functions (default = 0.1) |
and returns a new probabilistic neural network.
If spread
is near zero, the network acts as a nearest neighbor
classifier. As spread
becomes larger, the designed network takes into account
several nearby design vectors.
Examples
Here a classification problem is defined with a set of inputs P
and
class indices Tc
.
P = [1 2 3 4 5 6 7]; Tc = [1 2 3 2 2 3 1];
The class indices are converted to target vectors, and a PNN is designed and tested.
T = ind2vec(Tc) net = newpnn(P,T); Y = sim(net,P) Yc = vec2ind(Y)
Algorithms
newpnn
creates a two-layer network. The first layer has
radbas
neurons, and calculates its weighted inputs with
dist
and its net input with netprod
. The second layer has
compet
neurons, and calculates its weighted input with
dotprod
and its net inputs with netsum
. Only the first
layer has biases.
newpnn
sets the first-layer weights to P'
, and the
first-layer biases are all set to 0.8326/spread
, resulting in radial basis
functions that cross 0.5 at weighted inputs of +/– spread
. The second-layer
weights W2
are set to T
.
References
Wasserman, P.D., Advanced Methods in Neural Computing, New York, Van Nostrand Reinhold, 1993, pp. 35–55
Version History
Introduced before R2006a