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Samples a set of classes from a distribution learned during training.
tf.random.learned_unigram_candidate_sampler(
    true_classes,
    num_true,
    num_sampled,
    unique,
    range_max,
    seed=None,
    name=None
)
This operation randomly samples a tensor of sampled classes
(sampled_candidates) from the range of integers [0, range_max).
The elements of sampled_candidates are drawn without replacement
(if unique=True) or with replacement (if unique=False) from
the base distribution.
The base distribution for this operation is constructed on the fly
during training.  It is a unigram distribution over the target
classes seen so far during training.  Every integer in [0, range_max)
begins with a weight of 1, and is incremented by 1 each time it is
seen as a target class.  The base distribution is not saved to checkpoints,
so it is reset when the model is reloaded.
In addition, this operation returns tensors true_expected_count
and sampled_expected_count representing the number of times each
of the target classes (true_classes) and the sampled
classes (sampled_candidates) is expected to occur in an average
tensor of sampled classes.  These values correspond to Q(y|x)
defined in this
document.
If unique=True, then these are post-rejection probabilities and we
compute them approximately.
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