Generates labels for candidate sampling with a learned unigram distribution.
tf.raw_ops.LearnedUnigramCandidateSampler(
    true_classes,
    num_true,
    num_sampled,
    unique,
    range_max,
    seed=0,
    seed2=0,
    name=None
)
See explanations of candidate sampling and the data formats at
go/candidate-sampling.
For each batch, this op picks a single set of sampled candidate labels.
The advantages of sampling candidates per-batch are simplicity and the
possibility of efficient dense matrix multiplication. The disadvantage is that
the sampled candidates must be chosen independently of the context and of the
true labels.
| Args | 
|---|
| true_classes | A Tensorof typeint64.
A batch_size * num_true matrix, in which each row contains the
IDs of the num_true target_classes in the corresponding original label. | 
| num_true | An intthat is>= 1. Number of true labels per context. | 
| num_sampled | An intthat is>= 1.
Number of candidates to randomly sample. | 
| unique | A bool.
If unique is true, we sample with rejection, so that all sampled
candidates in a batch are unique. This requires some approximation to
estimate the post-rejection sampling probabilities. | 
| range_max | An intthat is>= 1.
The sampler will sample integers from the interval [0, range_max). | 
| seed | An optional int. Defaults to0.
If either seed or seed2 are set to be non-zero, the random number
generator is seeded by the given seed.  Otherwise, it is seeded by a
random seed. | 
| seed2 | An optional int. Defaults to0.
An second seed to avoid seed collision. | 
| name | A name for the operation (optional). | 
| Returns | 
|---|
| A tuple of Tensorobjects (sampled_candidates, true_expected_count, sampled_expected_count). | 
| sampled_candidates | A Tensorof typeint64. | 
| true_expected_count | A Tensorof typefloat32. | 
| sampled_expected_count | A Tensorof typefloat32. |