# Weka multilayer perceptron classifier output to code

I am newbie in using weka and neural networks. I am little confused in transforming weka output to the code level. Here it is my weka output for the trained multilayer perceptron.

``````=== Classifier model (full training set) ===

Sigmoid Node 0
Inputs    Weights
Threshold    -7.728242643484787
Node 2    9.643254844595948
Node 3    -8.919025399127651
Sigmoid Node 1
Inputs    Weights
Threshold    7.728242205764689
Node 2    -9.643254376294452
Node 3    8.91902493707197
Sigmoid Node 2
Inputs    Weights
Threshold    21.0918376938558
Attrib mean    -19.54425890349859
Attrib std    36.730369650588976
Sigmoid Node 3
Inputs    Weights
Threshold    16.25280971170097
Attrib mean    -17.677516091162413
Attrib std    14.141388386397688
Class valid
Input
Node 0
Class invalid
Input
Node 1
``````

and here it is how I am converting to MATLAB code

``````node3 = sdev * 14.141388386397688 +  avg *-17.677516091162413;
node3 = 1 / (1 + exp(-node3));
if(node3 < 16.25280971170097)
node3 = 0;
end

node2 = sdev * 36.730369650588976 +  avg * -19.54425890349859;
node2 = 1 / (1 + exp(-node2));
if(node2 < 21.0918376938558)
node2 = 0;
end

node1 = node3 * 8.91902493707197 +  node2 * -9.643254376294452;
node1 = 1 / (1 + exp(-node1));
if(node1 < 7.728242205764689)
node1 = 0;
end

node0 = node3 * -8.91902493707197 +  node2 * 9.643254376294452;
node0 = 1 / (1 + exp(-node0));
if(node0 < -7.728242205764689)
node0 = 0;
end
``````

But I am getting some weird output using this, can anybody please help me in transforming the weka generated output to functional neural network.

-
That's not how thresholds work in a multilayer network; you add them into a node's input before computing the logistic sigmoid. Pick up any good book on neural networks for the formulas. – larsmans Nov 12 '12 at 13:51
Can you please elaborate, is this what do you mean node0 = node3 * -8.91902493707197 + node2 * 9.643254376294452 -7.728242205764689; node0 = 1 / (1 + exp(-node0)); then how can I use node0 output for classification? – jeniusj Nov 12 '12 at 18:10
That might be it, or you might have to add `7.728` -- it depends on Weka conventions, which I'm not familiar with. How to do classification depends on the structure of the network, which is not apparent from the question. – larsmans Nov 12 '12 at 19:37

What you currently have from Weka is a network itself (its weights and attributes). AFAIK, Weka can generate Java source code for classifiers, listed on this page. I'm not sure your classifier is one of these classes. If it does support this, then just choose `Classify` -> `More options` -> `Output source code`. Here is some explanation from Weka mailing list.
MLP hasn't implemented `Sourcable` interface so it can't generate the classifier source code. (Here is document of MLP class.) – SuB Nov 6 '14 at 8:23