Reputation: 2174
I am having a hard time with calculating cross entropy in tensorflow. In particular, I am using the function:
tf.nn.softmax_cross_entropy_with_logits()
Using what is seemingly simple code, I can only get it to return a zero
import tensorflow as tf
import numpy as np
sess = tf.InteractiveSession()
a = tf.placeholder(tf.float32, shape =[None, 1])
b = tf.placeholder(tf.float32, shape = [None, 1])
sess.run(tf.global_variables_initializer())
c = tf.nn.softmax_cross_entropy_with_logits(
logits=b, labels=a
).eval(feed_dict={b:np.array([[0.45]]), a:np.array([[0.2]])})
print c
returns
0
My understanding of cross entropy is as follows:
H(p,q) = p(x)*log(q(x))
Where p(x) is the true probability of event x and q(x) is the predicted probability of event x.
There if input any two numbers for p(x) and q(x) are used such that
0<p(x)<1 AND 0<q(x)<1
there should be a nonzero cross entropy. I am expecting that I am using tensorflow incorrectly. Thanks in advance for any help.
Upvotes: 9
Views: 30310
Reputation: 3288
Here is an implementation in Tensorflow 2.0 in case somebody else (me probably) needs it in the future.
@tf.function
def cross_entropy(x, y, epsilon = 1e-9):
return -2 * tf.reduce_mean(y * tf.math.log(x + epsilon), -1) / tf.math.log(2.)
x = tf.constant([
[1.0,0],
[0.5,0.5],
[.75,.25]
]
,dtype=tf.float32)
with tf.GradientTape() as tape:
tape.watch(x)
y = entropy(x, x)
tf.print(y)
tf.print(tape.gradient(y, x))
Output
[-0 1 0.811278105]
[[-1.44269502 29.8973541]
[-0.442695022 -0.442695022]
[-1.02765751 0.557305]]
Upvotes: 2
Reputation: 83137
In addition to Don's answer (+1), this answer written by mrry may interest you, as it gives the formula to calculate the cross entropy in TensorFlow:
An alternative way to write:
xent = tf.nn.softmax_cross_entropy_with_logits(logits, labels)
...would be:
softmax = tf.nn.softmax(logits) xent = -tf.reduce_sum(labels * tf.log(softmax), 1)
However, this alternative would be (i) less numerically stable (since the softmax may compute much larger values) and (ii) less efficient (since some redundant computation would happen in the backprop). For real uses, we recommend that you use
tf.nn.softmax_cross_entropy_with_logits()
.
Upvotes: 20
Reputation: 14031
Like they say, you can't spell "softmax_cross_entropy_with_logits" without "softmax". Softmax of [0.45]
is [1]
, and log(1)
is 0
.
Measures the probability error in discrete classification tasks in which the classes are mutually exclusive (each entry is in exactly one class). For example, each CIFAR-10 image is labeled with one and only one label: an image can be a dog or a truck, but not both.
NOTE: While the classes are mutually exclusive, their probabilities need not be. All that is required is that each row of
labels
is a valid probability distribution. If they are not, the computation of the gradient will be incorrect.If using exclusive
labels
(wherein one and only one class is true at a time), seesparse_softmax_cross_entropy_with_logits
.WARNING: This op expects unscaled logits, since it performs a
softmax
onlogits
internally for efficiency. Do not call this op with the output ofsoftmax
, as it will produce incorrect results.
logits
andlabels
must have the same shape[batch_size, num_classes]
and the same dtype (eitherfloat16
,float32
, orfloat64
).
Upvotes: 14