I'm trying to create a simple weighted loss function.
Say, I have input dimensions 100 * 5, and output dimensions also 100 * 5. I also have a weight matrix of the same dimension.
Something like the following:
import numpy as np
train_X = np.random.randn(100, 5)
train_Y = np.random.randn(100, 5)*0.01 + train_X
weights = np.random.randn(*train_X.shape)
Defining the custom loss function
def custom_loss_1(y_true, y_pred):
return K.mean(K.abs(y_true-y_pred)*weights)
Defining the model
from keras.layers import Dense, Input
from keras import Model
import keras.backend as K
input_layer = Input(shape=(5,))
out = Dense(5)(input_layer)
model = Model(input_layer, out)
Testing with existing metrics works fine
model.compile('adam','mean_absolute_error')
model.fit(train_X, train_Y, epochs=1)
Testing with our custom loss function doesn't work
model.compile('adam',custom_loss_1)
model.fit(train_X, train_Y, epochs=10)
It gives the following stack trace:
InvalidArgumentError (see above for traceback): Incompatible shapes: [32,5] vs. [100,5]
[[Node: loss_9/dense_8_loss/mul = Mul[T=DT_FLOAT, _device="/job:localhost/replica:0/task:0/device:CPU:0"](loss_9/dense_8_loss/Abs, loss_9/dense_8_loss/mul/y)]]
Where is the number 32 coming from?
Testing a loss function with weights as Keras tensors
def custom_loss_2(y_true, y_pred):
return K.mean(K.abs(y_true-y_pred)*K.ones_like(y_true))
This function seems to do the work. So, probably suggests that a Keras tensor as a weight matrix would work. So, I created another version of the loss function.
Loss function try 3
from functools import partial
def custom_loss_3(y_true, y_pred, weights):
return K.mean(K.abs(y_true-y_pred)*K.variable(weights, dtype=y_true.dtype))
cl3 = partial(custom_loss_3, weights=weights)
Fitting data using cl3 gives the same error as above.
InvalidArgumentError (see above for traceback): Incompatible shapes: [32,5] vs. [100,5]
[[Node: loss_11/dense_8_loss/mul = Mul[T=DT_FLOAT, _device="/job:localhost/replica:0/task:0/device:CPU:0"](loss_11/dense_8_loss/Abs, loss_11/dense_8_loss/Variable/read)]]
I wonder what I'm missing! I could have used the notion of sample_weight in Keras; but then I'd have to reshape my inputs to a 3d vector.
I thought that this custom loss function should really have been trivial.