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there is a function like: y = sin(x) I want to use PyBrain networks to fit the functions, here are what i did: when you run it you will get what i get, the data obtained is far from what it should be.

from pybrain.datasets import SupervisedDataSet
from pybrain.tools.shortcuts import buildNetwork
from pybrain.supervised.trainers import BackpropTrainer
import pickle
import scipy as sp
import numpy as np
import pylab as pl

x = np.linspace(0, 4*np.pi, 100)
ds = SupervisedDataSet(1,1)

for i in x:
print ds

n = buildNetwork(ds.indim,3,3,3,ds.outdim,recurrent=True)
t = BackpropTrainer(n,learningrate=0.01,momentum=0.5,verbose=True)

fileObject = open('trained_net', 'w')
pickle.dump(n, fileObject)

fileObject = open('trained_net','r')
net = pickle.load(fileObject)

y = []
for i in x:

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So what is your question? Did you try other network architectures than this 5-layer-deep example? –  schaul Aug 7 '12 at 4:10

1 Answer 1

I suppose your problem is that this network does not fit the function well. The total number of network nodes is too low to properly fit this sin(x) function: the function is too complex. Also, for fitting any function, no more than one hidden layer is required in principle.

For instance, try to remove two hidden layers, and increase the number of hidden nodes (to, say, 20). Your code fits the function just fine then

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