# Neural Network Continuous tanh-Sigmoid Activation Function and Random Weights

I really need help implementing a continuous tanh-sigmoid activation function in a very basic neural network. If you could give a basic example that would be great, but if you could change it in my source code I would be extremely grateful! Also, what range should the random weights be initiated with (i.e. what range)?

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The weight range depends on what input data range you have. In some implementations the weights can also be negative.

For possible Sigmoid functions, check here (tanh is not the only possibility):

http://en.wikipedia.org/wiki/Sigmoid_function

Tip: You can typically compute the NN with matrix multiplications.

http://www.dtreg.com/mlfn.htm

http://en.wikipedia.org/wiki/Neural_network

P.S.: probably not a good idea to do this in JavaScript.

you can either implement it via exp(x) , See: http://www.javascripter.net/faq/mathfunc.htm

``````          sinh(x)    exp(x) - exp(-x)     exp(2x) - 1
tanh(x) = ------- = ------------------ = -------------
cosh(x)    exp(x) + exp(-x)     exp(2x) + 1
``````

that gives you:

``````function tanh(x) {
e = Math.exp(2*x);
return (e - 1) / (e + 1) ;
};
``````

another solution is to store a table with the tanh function values in an array, and define a JavaScript function which interpolates the tanh values for x based on the tanh values stored in the array

typically people don't want [-inf...+inf] as the range of the input values, and don't want [-1...+1] as the range of output values -- therefore you might need a different sigmoid function!

you need to take the expected range of input values, and the expected range of output values, and use those to shift the actual sigmoid function, the weight-ranges and the value of the threshhold.

a threshhold of 0.7 or larger is typically used. You need to experiment with that.

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 Yes, I know which function I need to use, but how do you actually implement it? What do you do with the value returned? What do you compare it against? – Conner Ruhl Nov 28 '11 at 1:33 For my situation tanh and javascript is a must, bear with me :) But what I am really interested in is what it would look like in code. – Conner Ruhl Nov 28 '11 at 1:39 see added answer above – Tilo Nov 28 '11 at 2:31 O.K., you are one step away from answering my question :D Now that we have the value, what do you compare it against to determine whether or not to "activate" the neuron? – Conner Ruhl Nov 28 '11 at 2:49 that's up to you - you can play around with it... but as tanh(x) is between -1 .. +1 , you probably want to compare it against |x| > 0.7 or something larger. – Tilo Nov 28 '11 at 2:55
``````this.output = 2 / (1 + Math.exp(-2 * input)) - 1;