I used neural network toolbox in RapidMiner and Matlab to make a preliminary test on my data. The results look good. I prefer using Python NN library, and so I tried Pybrain, which does not gives me good results. Maybe I do not try much.
from pybrain.supervised.trainers import BackpropTrainer, BackpropTrainer from pybrain.tools.shortcuts import buildNetwork from pybrain.structure import TanhLayer from pybrain.datasets import SupervisedDataSet # the input and output dataset [input, output] = genInput(allData, "gh",2) # develop the dataset ds = SupervisedDataSet(3,1) ds.setField('input', input.transpose()) ds.setField('target', output.reshape(1,-1).transpose()) ## train the neural network net = buildNetwork(3, 10, 1, bias=True) trainer = BackpropTrainer(net, learningrate=0.01, momentum=0.1, verbose=True) trainer.trainOnDataset(ds, 1000) trainer.testOnData(verbose=True)
The errors are quite large (Matlab NN gives very good results). I looked at the code of
trainer, but not sure how to adjust the training function? What are other parameters should I adjust, except learning rate and momentum?
I have found neurolab is similar to Matlab neural network toolboxk but not contains validation function.