tf.random.fixed_unigram_candidate_sampler
Stay organized with collections
Save and categorize content based on your preferences.
Samples a set of classes using the provided (fixed) base distribution.
tf.random.fixed_unigram_candidate_sampler(
true_classes,
num_true,
num_sampled,
unique,
range_max,
vocab_file='',
distortion=1.0,
num_reserved_ids=0,
num_shards=1,
shard=0,
unigrams=(),
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 is read from a file or passed in as an
in-memory array. There is also an option to skew the distribution by
applying a distortion power to the weights.
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.
Args |
true_classes
|
A Tensor of type int64 and shape [batch_size,
num_true] . The target classes.
|
num_true
|
An int . The number of target classes per training example.
|
num_sampled
|
An int . The number of classes to randomly sample.
|
unique
|
A bool . Determines whether all sampled classes in a batch are
unique.
|
range_max
|
An int . The number of possible classes.
|
vocab_file
|
Each valid line in this file (which should have a CSV-like
format) corresponds to a valid word ID. IDs are in sequential order,
starting from num_reserved_ids. The last entry in each line is expected
to be a value corresponding to the count or relative probability. Exactly
one of vocab_file and unigrams needs to be passed to this operation.
|
distortion
|
The distortion is used to skew the unigram probability
distribution. Each weight is first raised to the distortion's power
before adding to the internal unigram distribution. As a result,
distortion = 1.0 gives regular unigram sampling (as defined by the vocab
file), and distortion = 0.0 gives a uniform distribution.
|
num_reserved_ids
|
Optionally some reserved IDs can be added in the range
[0, num_reserved_ids) by the users. One use case is that a special
unknown word token is used as ID 0. These IDs will have a sampling
probability of 0.
|
num_shards
|
A sampler can be used to sample from a subset of the original
range in order to speed up the whole computation through parallelism. This
parameter (together with shard ) indicates the number of partitions that
are being used in the overall computation.
|
shard
|
A sampler can be used to sample from a subset of the original range
in order to speed up the whole computation through parallelism. This
parameter (together with num_shards ) indicates the particular partition
number of the operation, when partitioning is being used.
|
unigrams
|
A list of unigram counts or probabilities, one per ID in
sequential order. Exactly one of vocab_file and unigrams should be
passed to this operation.
|
seed
|
An int . An operation-specific seed. Default is 0.
|
name
|
A name for the operation (optional).
|
Returns |
sampled_candidates
|
A tensor of type int64 and shape [num_sampled] .
The sampled classes.
|
true_expected_count
|
A tensor of type float . Same shape as
true_classes . The expected counts under the sampling distribution
of each of true_classes .
|
sampled_expected_count
|
A tensor of type float . Same shape as
sampled_candidates . The expected counts under the sampling distribution
of each of sampled_candidates .
|
Except as otherwise noted, the content of this page is licensed under the Creative Commons Attribution 4.0 License, and code samples are licensed under the Apache 2.0 License. For details, see the Google Developers Site Policies. Java is a registered trademark of Oracle and/or its affiliates. Some content is licensed under the numpy license.
Last updated 2022-11-04 UTC.
[[["Easy to understand","easyToUnderstand","thumb-up"],["Solved my problem","solvedMyProblem","thumb-up"],["Other","otherUp","thumb-up"]],[["Missing the information I need","missingTheInformationINeed","thumb-down"],["Too complicated / too many steps","tooComplicatedTooManySteps","thumb-down"],["Out of date","outOfDate","thumb-down"],["Samples / code issue","samplesCodeIssue","thumb-down"],["Other","otherDown","thumb-down"]],["Last updated 2022-11-04 UTC."],[],[]]