tf.keras.ops.binary_crossentropy
Computes binary cross-entropy loss between target and output tensor.
tf.keras.ops.binary_crossentropy(
target, output, from_logits=False
)
The binary cross-entropy loss is commonly used in binary
classification tasks where each input sample belongs to one
of the two classes. It measures the dissimilarity between the
target and output probabilities or logits.
Args |
target
|
The target tensor representing the true binary labels.
Its shape should match the shape of the output tensor.
|
output
|
The output tensor representing the predicted probabilities
or logits. Its shape should match the shape of the
target tensor.
|
from_logits
|
(optional) Whether output is a tensor of logits or
probabilities.
Set it to True if output represents logits; otherwise,
set it to False if output represents probabilities.
Defaults toFalse .
|
Returns |
Integer tensor: The computed binary cross-entropy loss between
target and output .
|
Example:
target = keras.ops.convert_to_tensor([0, 1, 1, 0])
output = keras.ops.convert_to_tensor([0.1, 0.9, 0.8, 0.2])
binary_crossentropy(target, output)
array([0.10536054 0.10536054 0.22314355 0.22314355],
shape=(4,), dtype=float32)
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Last updated 2024-06-07 UTC.
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