I'm using Keras for a regression task and want to restrict my output to a range (say between 1 and 10)

Is there a way to ensure this?

  • ... min and max are your friend? Is that want you wanted? – OneRaynyDay Apr 19 '18 at 1:17
  • Yes, how would i use it though? – megan adams Apr 19 '18 at 1:21
  • For Eg. model.add(Dense(1)) is my final layer. How do i add min, max constraints? – megan adams Apr 19 '18 at 1:28

Write a custom activation function like this

# a simple custom activation
from keras import backend as BK
def mapping_to_target_range( x, target_min=1, target_max=10 ) :
    x02 = BK.tanh(x) + 1 # x in range(0,2)
    scale = ( target_max-target_min )/2.
    return  x02 * scale + target_min

# create a simple model
from keras.layers import Input, Dense
from keras.models import Model
x = Input(shape=(1000,))
y = Dense(4, activation=mapping_to_target_range )(x)
model = Model(inputs=x, outputs=y)

# testing
import numpy as np 
a = np.random.randn(10,1000)
b = model.predict(a)
print b.min(), b.max()

And you are expected to see the min and max values of b are very close to 1 and 10, respectively.

| improve this answer | |

Normalize your outputs so they are in the range 0, 1. Make sure your normalization function lets you transform them back later.

The sigmoid activation function always outputs between 0, 1. Just make sure your last layer has sigmoid activation to restrict your output into that range. Now you can take your outputs and transform them back into the range you wanted.

You could also look into writing your own activation function to transform your data.

| improve this answer | |

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