I have tried to customize a loss function in Keras.
I have tried two approaches:
import keras.backend as K
from keras.losses import mean_absolute_error
def mae_in_minute(y_true, y_pred):
temp = K.mean(K.abs(y_pred - y_true), axis=-1)/60
return temp
and
import keras.backend as K
from keras.losses import mean_absolute_error
def mae_in_minute(y_true, y_pred):
return mean_absolute_error(y_true, y_pred)/60
My model structure is:
input_layer = Input(shape=training.shape[1:len(training.shape)])
added = Conv2D(128, (3, training.shape[2]),activation="relu")(input_layer)
added = Flatten()(added)
added = Dense(600, activation='relu')(added)
added = Dense(400, activation='relu')(added)
added = Dense(256, activation='relu')(added)
added = Dense(256, activation='relu')(added)
added = Dense(256, activation='relu')(added)
added = Dense(200, activation='relu')(added)
added = Dense(100, activation='relu')(added)
added = Dense(50, activation='relu')(added)
output_temp = Dense(2,activation='softmax', name="temp_output")(added)
output_time = Dense(1,activation='relu', name="time_output")(added)
model = Model(input=input_layer, output=[output_temp,output_time])
losses = {
"temp_output": "categorical_crossentropy",
"time_output": "mae_in_minute",
}
lossWeights = {"temp_output": 1.0, "time_output": 1.0}
model.compile(optimizer='adam',loss=losses, loss_weights=lossWeights)
model.summary()
But I get this error message with both custom loss approaches:
Unknown loss function:mae_in_minute
How do I fix this problem?
I have found one solution here.
But is this the only way to use a custom loss? To save my model in advance and load it?
Thanks in advance.
Just remove the quoation of custom loss, and it should run perfectly. #My_loss
import keras.backend as K
from keras.losses import mean_absolute_error
def mae_in_minute(y_true, y_pred):
return mean_absolute_error(y_true, y_pred)/60
##Before losses = { "temp_output": "categorical_crossentropy", "time_output": "mae_in_minute", } lossWeights = {"temp_output": 1.0, "time_output": 1.0} model.compile(optimizer='adam',loss=losses, loss_weights=lossWeights) model.summary()
##After losses = { "temp_output": "categorical_crossentropy", "time_output": mae_in_minute, } lossWeights = {"temp_output": 1.0, "time_output": 1.0} model.compile(optimizer='adam',loss=losses, loss_weights=lossWeights) model.summary()