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I am training Recurring neural net elman in R.

nn4 <- elman(norm_traindata4,trsignals,size=10,initFuncparams=iniweight,linOut=FALSE,maxit=1000, learnFunfParams=0.01,inputsTest=norm_testdata4,targetsTest=tesignals)

predicted = predict(nn4,norm_testdata4)

Everytime I run this, the predicted values are different even for the same set of input parameters like size, learnFunParams. How to get the same predicted value for same values of parameters?

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Is anyone out there who can reply this question? – user395882 Apr 5 '12 at 11:18

Include the following line at the beginning of your code:

set.seed(1)

Neural network uses random initial values, and can converge to a local minima. Thus setting a seed, generates the same random initial values and you get the same neural network every time.

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