DLeastSquare¶
Inheritance Diagram

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class
ashpy.keras.losses.DLeastSquare[source]¶ Bases:
tensorflow.python.keras.losses.LossDiscriminator Least Square Loss as
tf.keras.losses.Loss.Methods
__init__()Least square Loss for Discriminator. call(d_real, d_fake)Compute the Least Square Loss. Attributes
reductionReturn the reduction type for this loss. -
__init__()[source]¶ Least square Loss for Discriminator.
Reference: Least Squares Generative Adversarial Networks [1] .
Basically the Mean Squared Error between the discriminator output when evaluated in fake samples and 0 and the discriminator output when evaluated in real samples and 1: For the unconditioned case this is:
\[L_{D} = \frac{1}{2} E[(D(x) - 1)^2 + (0 - D(G(z))^2]\]where x are real samples and z is the latent vector.
For the conditioned case this is:
\[L_{D} = \frac{1}{2} E[(D(x, c) - 1)^2 + (0 - D(G(c), c)^2]\]where c is the condition and x are real samples.
[1] Least Squares Generative Adversarial Networks https://arxiv.org/abs/1611.04076 Return type: None
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call(d_real, d_fake)[source]¶ Compute the Least Square Loss.
Parameters: Return type: TensorReturns: tf.Tensor– Loss.
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reduction¶ Return the reduction type for this loss.
Return type: ReductionV2Returns: tf.keras.losses.Reduction– Reduction.
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