I tried to use DBN function imported from nolearn package, and here is my code:

from nolearn.dbn import DBN
import numpy as np
from sklearn import cross_validation

fileName = 'data.csv'
fileName_1 = 'label.csv'

data = np.genfromtxt(fileName, dtype=float, delimiter = ',')
label = np.genfromtxt(fileName_1, dtype=int, delimiter = ',')

clf = DBN(
    [data, 300, 10],

score = cross_validation.cross_val_score(clf, data, label,scoring='f1', cv=10)
print score

Since my data has the shape(1231, 229) and label with the shape(1231,13), the label sets looks like ([0 0 1 0 1 0 1 0 0 0 1 1 0] ...,[....]), when I ran my code, I got the this error message: bad input shape (1231,13). I wonder two problem might happened here:

  1. DBN does not support multi-label classification
  2. my label is not suitable to be used in DBN fit function.

As mentioned by Francisco Vargas, nolearn.dbn is deprecated and you should use nolearn.lasagne instead (if you can).

If you want to do multi-label classification in lasagne, then you should set your regression parameter to True, define a validation score and a custom loss.

Here's an example:

import numpy as np
import theano.tensor as T
from lasagne import layers
from lasagne.updates import nesterov_momentum
from nolearn.lasagne import NeuralNet
from nolearn.lasagne import BatchIterator
from lasagne import nonlinearities

# custom loss: multi label cross entropy
def multilabel_objective(predictions, targets):
    epsilon = np.float32(1.0e-6)
    one = np.float32(1.0)
    pred = T.clip(predictions, epsilon, one - epsilon)
    return -T.sum(targets * T.log(pred) + (one - targets) * T.log(one - pred), axis=1)

net = NeuralNet(
    # customize "layers" to represent the architecture you want
    # here I took a dummy architecture
    layers=[(layers.InputLayer, {"name": 'input', 'shape': (None, 1, 229, 1)}),

            (layers.DenseLayer, {"name": 'hidden1', 'num_units': 20}),
            (layers.DenseLayer, {"name": 'output', 'nonlinearity': nonlinearities.sigmoid, 'num_units': 13})], #because you have 13 outputs

    # optimization method:

    max_epochs=500,  # we want to train this many epochs

    #Here are the important parameters for multi labels

    custom_score=("validation score", lambda x, y: np.mean(np.abs(x - y)))


net.fit(X_train, labels_train)
  • Thank you Massias. When I was trying to test your example, I was stuck on the import error: cannot import name mse. I searched this error online, many guys said there was a problem on Lasagne and nolearn that are not compatible. I am using the no learn 0.5. – Kun Aug 25 '15 at 14:27
  • @Fox I ran into this problem too, sometimes versions of theano and lasagne do not agree. Run the following lines from command line successively : first pip install -r https://raw.githubusercontent.com/Lasagne/Lasagne/master/requirements.txt and then pip install https://github.com/Lasagne/Lasagne/archive/master.zip; after that it should work – P. Camilleri Aug 25 '15 at 14:33
  • I followed your instruction and still have this problem. I checked the requirement, is there a problem with my Theano version? Mine is 0.7.0. – Kun Aug 25 '15 at 14:47
  • @Fox I have theano 0.7.0, nolearn 0.6a0.dev0 and lasagne 0.1. Same for you? You can check with pip show <moduleName> – P. Camilleri Aug 25 '15 at 14:53
  • I have theano 0.7.0, nolearn 0.5 and lasagne 0.2.dev1, look like both of nolearn and lasagne are not same as yours. – Kun Aug 25 '15 at 14:55

Fit calls BuildDBN which can be found here here an important thing to note is that dbn has been deprecated and you can only find it old_commits. Anyways if you are looking for extra info its probably good to check those two from what I can see in your snippet is that the first parameter of DBN namely [data, 300, 10] should be [data.shape[1], 300, 10] based on the documentation and the source code. Hope this helps.

  • Thanks. Does DBN support multi-label classification task? I wonder the problem also arises from the label. – Kun Aug 24 '15 at 17:52

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