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I'm following this tutorial (section 6: Tying it All Together), with my own dataset. I can get the example in the tutorial working, no problem, with the sample dataset provided.

I'm getting a binary cross-entropy error that is negative, and no improvements as epochs progress. I'm pretty sure binary cross-entropy should always be positive, and I should see some improvement in the loss. I've truncated the sample output (and code call) below to 5 epochs. Others seem to run into similar problems sometimes when training CNNs, but I didn't see a clear solution in my case. Does anyone know why this is happening?

Sample output:

Creating TensorFlow device (/gpu:2) -> (device: 2, name: GeForce GTX TITAN Black, pci bus id: 0000:84:00.0)
10240/10240 [==============================] - 2s - loss: -5.5378 - acc: 0.5000 - val_loss: -7.9712 - val_acc: 0.5000
Epoch 2/5
10240/10240 [==============================] - 0s - loss: -7.9712 - acc: 0.5000 - val_loss: -7.9712 - val_acc: 0.5000
Epoch 3/5
10240/10240 [==============================] - 0s - loss: -7.9712 - acc: 0.5000 - val_loss: -7.9712 - val_acc: 0.5000
Epoch 4/5
10240/10240 [==============================] - 0s - loss: -7.9712 - acc: 0.5000 - val_loss: -7.9712 - val_acc: 0.5000
Epoch 5/5
10240/10240 [==============================] - 0s - loss: -7.9712 - acc: 0.5000 - val_loss: -7.9712 - val_acc: 0.5000

My code:

import numpy as np
import keras
from keras.models import Sequential
from keras.layers import Dense
from keras.callbacks import History

history = History()
seed = 7
np.random.seed(seed)

dataset = np.loadtxt('train_rows.csv', delimiter=",")

#print dataset.shape (10240, 64)

# split into input (X) and output (Y) variables
X = dataset[:, 0:(dataset.shape[1]-2)] #0:62 (63 of 64 columns)
Y = dataset[:, dataset.shape[1]-1]  #column 64 counting from 0

#print X.shape (10240, 62)
#print Y.shape (10240,)

testset = np.loadtxt('test_rows.csv', delimiter=",")

#print testset.shape (2560, 64)

X_test = testset[:,0:(testset.shape[1]-2)]
Y_test = testset[:,testset.shape[1]-1]

#print X_test.shape (2560, 62)
#print Y_test.shape (2560,)

num_units_per_layer = [100, 50]

### create model
model = Sequential()
model.add(Dense(100, input_dim=(dataset.shape[1]-2), init='uniform', activation='relu'))
model.add(Dense(50, init='uniform', activation='relu'))
model.add(Dense(1, init='uniform', activation='sigmoid'))

model.compile(loss='binary_crossentropy', optimizer='adam', metrics=['accuracy'])
## Fit the model
model.fit(X, Y, validation_data=(X_test, Y_test), nb_epoch=5, batch_size=128)
12

I should have printed out my response variable. The categories were labelled as 1 and 2 instead of 0 and 1, which confused the classifier.

  • 3
    In my case, I had an autoencoder with this problem. It turned out that 4 of my columns in my matrix had values larger than 1, whereas the remaining 284 columns were in the range [0,1]. Rebasing the columns with values larger than 1 (using their max values), fixed my issue. – shadi Jul 5 '17 at 14:28
  • 5
    I want to share my case too. I use a CNN U-Net for training image segmentation w/ cross binary-entropy. I happened to convert my masks from True/False to 255/0 and that confused the classifier and caused negative losses. – Nicole Finnie Mar 10 '18 at 23:21
  • How did you solve it? @NicoleFinnie – Preetom Saha Arko Aug 21 '18 at 14:26
  • @PreetomSahaArko I normalized the values between 0 and 1 github.com/nicolefinnie/kaggle-dsb2018/blob/master/src/modules/… – Nicole Finnie Aug 22 '18 at 8:29
  • thanks for sharing. Indeed, I've had the same target classes: [2, 1], that were remapped from the source values: [-1, 1]. With source values, loss is still sometimes negative. Log loss: mean(y_true*log(y_pred) + (1-y_true)log(1-y_pred)). Where you get log of a negative (which is undefined), the system ends up optimizing for only half of samples. Would be cool, if somebody could validate my thinking here. – D_K Aug 23 at 12:37

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