TextVectorization
classkeras.layers.TextVectorization(
max_tokens=None,
standardize="lower_and_strip_punctuation",
split="whitespace",
ngrams=None,
output_mode="int",
output_sequence_length=None,
pad_to_max_tokens=False,
vocabulary=None,
idf_weights=None,
sparse=False,
ragged=False,
encoding="utf-8",
name=None,
**kwargs
)
A preprocessing layer which maps text features to integer sequences.
This layer has basic options for managing text in a Keras model. It
transforms a batch of strings (one example = one string) into either a list
of token indices (one example = 1D tensor of integer token indices) or a
dense representation (one example = 1D tensor of float values representing
data about the example's tokens). This layer is meant to handle natural
language inputs. To handle simple string inputs (categorical strings or
pre-tokenized strings) see kers_core.layers.StringLookup
.
The vocabulary for the layer must be either supplied on construction or
learned via adapt()
. When this layer is adapted, it will analyze the
dataset, determine the frequency of individual string values, and create a
vocabulary from them. This vocabulary can have unlimited size or be capped,
depending on the configuration options for this layer; if there are more
unique values in the input than the maximum vocabulary size, the most
frequent terms will be used to create the vocabulary.
The processing of each example contains the following steps:
Some notes on passing callables to customize splitting and normalization for this layer:
keras.saving.register_keras_serializable
for more details).standardize
, the data received
by the callable will be exactly as passed to this layer. The callable
should return a tensor of the same shape as the input.split
, the data received by the
callable will have the 1st dimension squeezed out - instead of
[["string to split"], ["another string to split"]]
, the Callable will
see ["string to split", "another string to split"]
.
The callable should return a tf.Tensor
of dtype string
with the first dimension containing the split tokens -
in this example, we should see something like [["string", "to",
"split"], ["another", "string", "to", "split"]]
.Note: This layer uses TensorFlow internally. It cannot be used as part of the compiled computation graph of a model with any backend other than TensorFlow. It can however be used with any backend when running eagerly. It can also always be used as part of an input preprocessing pipeline with any backend (outside the model itself), which is how we recommend to use this layer.
Note: This layer is safe to use inside a tf.data
pipeline
(independently of which backend you're using).
Arguments
pad_to_max_tokens=True
. Note that this vocabulary
contains 1 OOV token, so the effective number of tokens is
(max_tokens - 1 - (1 if output_mode == "int" else 0))
.None
: No standardization."lower_and_strip_punctuation"
: Text will be lowercased and all
punctuation removed."lower"
: Text will be lowercased."strip_punctuation"
: All punctuation will be removed.None
: No splitting."whitespace"
: Split on whitespace."character"
: Split on each unicode character.None
, an integer
or tuple of integers; passing an integer will create ngrams
up to that integer, and passing a tuple of integers will
create ngrams for the specified values in the tuple.
Passing None
means that no ngrams will be created."int"
, "multi_hot"
, "count"
or "tf_idf"
,
configuring the layer as follows:"int"
: Outputs integer indices, one integer index per split
string token. When output_mode == "int"
,
0 is reserved for masked locations;
this reduces the vocab size to max_tokens - 2
instead of max_tokens - 1
."multi_hot"
: Outputs a single int array per batch, of either
vocab_size or max_tokens size, containing 1s in all elements
where the token mapped to that index exists at least
once in the batch item."count"
: Like "multi_hot"
, but the int array contains
a count of the number of times the token at that index
appeared in the batch item."tf_idf"
: Like "multi_hot"
, but the TF-IDF algorithm
is applied to find the value in each token slot.
For "int"
output, any shape of input and output is supported.
For all other output modes, currently only rank 1 inputs
(and rank 2 outputs after splitting) are supported.output_sequence_length
values, resulting in a tensor of shape
(batch_size, output_sequence_length)
regardless of how many tokens
resulted from the splitting step. Defaults to None
. If ragged
is True
then output_sequence_length
may still truncate the
output."multi_hot"
, "count"
,
and "tf_idf"
modes. If True
, the output will have
its feature axis padded to max_tokens
even if the number
of unique tokens in the vocabulary is less than max_tokens
,
resulting in a tensor of shape (batch_size, max_tokens)
regardless of vocabulary size. Defaults to False
.adapt()
the layer.output_mode
is "tf_idf"
. A tuple, list,
1D NumPy array, or 1D tensor of the same length as the vocabulary,
containing the floating point inverse document frequency weights,
which will be multiplied by per sample term counts for
the final tf_idf
weight. If the vocabulary
argument is set,
and output_mode
is "tf_idf"
, this argument must be supplied."int"
output mode.
Only supported with TensorFlow backend.
If True
, returns a RaggedTensor
instead of a dense Tensor
,
where each sequence may have a different length
after string splitting. Defaults to False
."multi_hot"
, "count"
, and
"tf_idf"
output modes. Only supported with TensorFlow
backend. If True
, returns a SparseTensor
instead of a dense Tensor
. Defaults to False
."utf-8"
.Examples
This example instantiates a TextVectorization
layer that lowercases text,
splits on whitespace, strips punctuation, and outputs integer vocab indices.
>>> max_tokens = 5000 # Maximum vocab size.
>>> max_len = 4 # Sequence length to pad the outputs to.
>>> # Create the layer.
>>> vectorize_layer = TextVectorization(
... max_tokens=max_tokens,
... output_mode='int',
... output_sequence_length=max_len)
>>> # Now that the vocab layer has been created, call `adapt` on the
>>> # list of strings to create the vocabulary.
>>> vectorize_layer.adapt(["foo bar", "bar baz", "baz bada boom"])
>>> # Now, the layer can map strings to integers -- you can use an
>>> # embedding layer to map these integers to learned embeddings.
>>> input_data = [["foo qux bar"], ["qux baz"]]
>>> vectorize_layer(input_data)
array([[4, 1, 3, 0],
[1, 2, 0, 0]])
This example instantiates a TextVectorization
layer by passing a list
of vocabulary terms to the layer's __init__()
method.
>>> vocab_data = ["earth", "wind", "and", "fire"]
>>> max_len = 4 # Sequence length to pad the outputs to.
>>> # Create the layer, passing the vocab directly. You can also pass the
>>> # vocabulary arg a path to a file containing one vocabulary word per
>>> # line.
>>> vectorize_layer = keras.layers.TextVectorization(
... max_tokens=max_tokens,
... output_mode='int',
... output_sequence_length=max_len,
... vocabulary=vocab_data)
>>> # Because we've passed the vocabulary directly, we don't need to adapt
>>> # the layer - the vocabulary is already set. The vocabulary contains the
>>> # padding token ('') and OOV token ('[UNK]')
>>> # as well as the passed tokens.
>>> vectorize_layer.get_vocabulary()
['', '[UNK]', 'earth', 'wind', 'and', 'fire']