tf.keras.regularizers.l1_l2
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Create a regularizer that applies both L1 and L2 penalties.
tf.keras.regularizers.l1_l2(
l1=0.01, l2=0.01
)
The L1 regularization penalty is computed as:
loss = l1 * reduce_sum(abs(x))
The L2 regularization penalty is computed as:
loss = l2 * reduce_sum(square(x))
Args |
l1
|
Float; L1 regularization factor.
|
l2
|
Float; L2 regularization factor.
|
Returns |
An L1L2 Regularizer with the given regularization factors.
|
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Last updated 2021-08-16 UTC.
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