Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I am trying to recreate a neural network based on given facts.It has 3 inputs,a hidden layer and an output.My problem is that the weights are also given,so I don't need to train.

I was thinking maybe I could save the trainning of a similar in structure neural network and change the values accordingly.Do you think that will work?Any other ideas.Thanks.

Neural Network Code:

    net = FeedForwardNetwork()
    inp = LinearLayer(3)
    h1 = SigmoidLayer(1)
    outp = LinearLayer(1)

    # add modules
    net.addOutputModule(outp)
    net.addInputModule(inp)
    net.addModule(h1)

    # create connections
    net.addConnection(FullConnection(inp, h1))
    net.addConnection(FullConnection(h1, outp))

    # finish up
    net.sortModules()


    trainer = BackpropTrainer(net, ds)
    trainer.trainUntilConvergence()

Save training and load code from How to save and recover PyBrain traning?

# Using NetworkWriter

from pybrain.tools.shortcuts import buildNetwork
from pybrain.tools.xml.networkwriter import NetworkWriter
from pybrain.tools.xml.networkreader import NetworkReader

net = buildNetwork(2,4,1)

NetworkWriter.writeToFile(net, 'filename.xml')
net = NetworkReader.readFrom('filename.xml') 
share|improve this question

1 Answer 1

I was curious how reading already trained network (with xml tool) is done. Because, that means network weights can be somehow set. So in NetworkReader documentation I found, that you can set parameters with _setParameters().

However that underscore means private method which could have potentially some side effects. Also keep in mind, that vector with weights must be same length as originally constructed network.

Example

>>> import numpy
>>> from pybrain.tools.shortcuts import buildNetwork
>>> net = buildNetwork(2,3,1)
>>> net.params

array([...some random values...])

>>> len(net.params)

13

>>> new_params = numpy.array([1.0]*13)
>>> net._setParameters(new_params)
>>> net.params

array([1.0, ..., 1.0])

Other important thing is to put values in right order. For example above it's like this:

[  1., 1., 1., 1., 1., 1.,      1., 1., 1.,        1.,       1., 1., 1.    ] 
     input->hidden0            hidden0->out     bias->out   bias->hidden0   

To determine which weights belongs to which connections between layers, try this

# net is our neural network from previous example
for c in [connection for connections in net.connections.values() for connection in connections]:
    print("{} -> {} => {}".format(c.inmod.name, c.outmod.name, c.params))

Anyway, I still don't know exact order of weights between layers...

share|improve this answer
1  
The ordering of weights in the parameters vector is uniquely defined, see here: stackoverflow.com/a/8161274/528041 –  schaul Feb 4 '13 at 6:05

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.