tf.compat.v2.nn.nce_loss
Computes and returns the noise-contrastive estimation training loss.
tf.compat.v2.nn.nce_loss( weights, biases, labels, inputs, num_sampled, num_classes, num_true=1, sampled_values=None, remove_accidental_hits=False, name='nce_loss' )
See Noise-contrastive estimation: A new estimation principle for unnormalized statistical models. Also see our Candidate Sampling Algorithms Reference
A common use case is to use this method for training, and calculate the full sigmoid loss for evaluation or inference as in the following example:
if mode == "train": loss = tf.nn.nce_loss( weights=weights, biases=biases, labels=labels, inputs=inputs, ...) elif mode == "eval": logits = tf.matmul(inputs, tf.transpose(weights)) logits = tf.nn.bias_add(logits, biases) labels_one_hot = tf.one_hot(labels, n_classes) loss = tf.nn.sigmoid_cross_entropy_with_logits( labels=labels_one_hot, logits=logits) loss = tf.reduce_sum(loss, axis=1)
Note: when doing embedding lookup onweights
andbias
, "div" partition strategy will be used. Support for other partition strategy will be added later.
Note: By default this uses a log-uniform (Zipfian) distribution for sampling, so your labels must be sorted in order of decreasing frequency to achieve good results. For more details, see tf.random.log_uniform_candidate_sampler
.
Note: In the case wherenum_true
> 1, we assign to each target class the target probability 1 /num_true
so that the target probabilities sum to 1 per-example.
Note: It would be useful to allow a variable number of target classes per example. We hope to provide this functionality in a future release. For now, if you have a variable number of target classes, you can pad them out to a constant number by either repeating them or by padding with an otherwise unused class.
Args | |
---|---|
weights | A Tensor of shape [num_classes, dim] , or a list of Tensor objects whose concatenation along dimension 0 has shape [num_classes, dim]. The (possibly-partitioned) class embeddings. |
biases | A Tensor of shape [num_classes] . The class biases. |
labels | A Tensor of type int64 and shape [batch_size, num_true] . The target classes. |
inputs | A Tensor of shape [batch_size, dim] . The forward activations of the input network. |
num_sampled | An int . The number of negative classes to randomly sample per batch. This single sample of negative classes is evaluated for each element in the batch. |
num_classes | An int . The number of possible classes. |
num_true | An int . The number of target classes per training example. |
sampled_values | a tuple of (sampled_candidates , true_expected_count , sampled_expected_count ) returned by a *_candidate_sampler function. (if None, we default to log_uniform_candidate_sampler ) |
remove_accidental_hits | A bool . Whether to remove "accidental hits" where a sampled class equals one of the target classes. If set to True , this is a "Sampled Logistic" loss instead of NCE, and we are learning to generate log-odds instead of log probabilities. See our Candidate Sampling Algorithms Reference. Default is False. |
name | A name for the operation (optional). |
Returns | |
---|---|
A batch_size 1-D tensor of per-example NCE losses. |
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Licensed under the Creative Commons Attribution License 3.0.
Code samples licensed under the Apache 2.0 License.
https://www.tensorflow.org/versions/r1.15/api_docs/python/tf/compat/v2/nn/nce_loss