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I'm trying to make a network that outputs a depth map, and semantic segmentation data separately.

In order to train the network, I'd like to use categorical cross entropy for the segmentation branch, and mean squared error for the branch that outputs the depth map.

I couldn't find any info on implementing the two loss functions for each branches in the Keras documentation for the Functional API.

Is it possible for me to use these loss functions simultaneously during training, or would it be better for me to train the different branches separately?

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From the documentation of Model.compile:

loss: String (name of objective function) or objective function. See losses. If the model has multiple outputs, you can use a different loss on each output by passing a dictionary or a list of losses. The loss value that will be minimized by the model will then be the sum of all individual losses.

If your output is named, you can use a dictionary mapping the names to the corresponding losses:

x = Input((10,))
out1 = Dense(10, activation='softmax', name='segmentation')(x)
out2 = Dense(10, name='depth')(x)
model = Model(x, [out1, out2])
model.compile(loss={'segmentation': 'categorical_crossentropy', 'depth': 'mse'},
              optimizer='adam')

Otherwise, use a list of losses (in the same order as the corresponding model outputs).

x = Input((10,))
out1 = Dense(10, activation='softmax')(x)
out2 = Dense(10)(x)
model = Model(x, [out1, out2])
model.compile(loss=['categorical_crossentropy', 'mse'], optimizer='adam')
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  • What about using different loss function for validation set. I mean I am using weight loss function for training set that have different number of example per each class ( it is unbalanced). But for validation, I don't want to use the weighted loss., because it has united number of example per each class. So can I pass different loss function for validation set?
    – W. Sam
    Aug 30 '18 at 22:41
  • @W.Sam How did you implement it? I think the built-in class_weight is only applied to the training set.
    – Yu-Yang
    Aug 31 '18 at 15:26
  • Is that mean the validation loss reported at each epoch is wrong value because it is based on training loss function?I implement it by building custom loss function and pass this custom loss function to losses. One possible solution is getting access to the flag of "is training", the same flag related with dropout and batch normalization since both operation have different behavior in training and validation. But I am not sure where I can find it. If I can find this flag I can control which loss to use in each phase.
    – W. Sam
    Sep 1 '18 at 16:35
  • 1
    If you're not using the class_weight argument or sample weights, then yes, your validation loss is computed by the same function as training loss. Maybe you can use K.in_train_phase() function in your custom loss.
    – Yu-Yang
    Sep 1 '18 at 17:39
  • Thank you very much Yu-Yang. That' what I am looking for. Thanks
    – W. Sam
    Sep 1 '18 at 18:04

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