learnis
Instar weight learning function
Syntax
[dW,LS] = learnis(W,P,Z,N,A,T,E,gW,gA,D,LP,LS)
info = learnis('code')
Description
learnis is the instar weight learning function.
[dW,LS] = learnis(W,P,Z,N,A,T,E,gW,gA,D,LP,LS) takes several inputs,
W |
|
P |
|
Z |
|
N |
|
A |
|
T |
|
E |
|
gW |
|
gA |
|
D |
|
LP | Learning parameters, none, |
LS | Learning state, initially should be = |
and returns
dW |
|
LS | New learning state |
Learning occurs according to learnis’s learning parameter, shown here
with its default value.
LP.lr - 0.01 | Learning rate |
info = learnis(' returns useful
information for each code')code character vector:
'pnames' | Names of learning parameters |
'pdefaults' | Default learning parameters |
'needg' | Returns 1 if this function uses |
Examples
Here you define a random input P, output A, and
weight matrix W for a layer with a two-element input and three neurons. Also
define the learning rate LR.
p = rand(2,1); a = rand(3,1); w = rand(3,2); lp.lr = 0.5;
Because learnis only needs these values to calculate a weight change
(see “Algorithm” below), use them to do so.
dW = learnis(w,p,[],[],a,[],[],[],[],[],lp,[])
Network Use
To prepare the weights and the bias of layer i of a custom network so
that it can learn with learnis,
Set
net.trainFcnto'trainr'. (net.trainParamautomatically becomestrainr’s default parameters.)Set
net.adaptFcnto'trains'. (net.adaptParamautomatically becomestrains’s default parameters.)Set each
net.inputWeights{i,j}.learnFcnto'learnis'.Set each
net.layerWeights{i,j}.learnFcnto'learnis'. (Each weight learning parameter property is automatically set tolearnis’s default parameters.)
To train the network (or enable it to adapt),
Set
net.trainParam(net.adaptParam) properties to desired values.Call
train(adapt).
Algorithms
learnis calculates the weight change dW for a given
neuron from the neuron’s input P, output A, and learning
rate LR according to the instar learning rule:
dw = lr*a*(p'-w)
References
Grossberg, S., Studies of the Mind and Brain, Drodrecht, Holland, Reidel Press, 1982
Version History
Introduced before R2006a