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Text vectorization layer.
tf.keras.layers.experimental.preprocessing.TextVectorization( max_tokens=None, standardize=LOWER_AND_STRIP_PUNCTUATION, split=SPLIT_ON_WHITESPACE, ngrams=None, output_mode=INT, output_sequence_length=None, pad_to_max_tokens=True, **kwargs )
This layer has basic options for managing text in a Keras model. It transforms a batch of strings (one sample = one string) into either a list of token indices (one sample = 1D tensor of integer token indices) or a dense representation (one sample = 1D tensor of float values representing data about the sample's tokens).
If desired, the user can call this layer's adapt() method on a dataset. 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 sample contains the following steps: 1) standardize each sample (usually lowercasing + punctuation stripping) 2) split each sample into substrings (usually words) 3) recombine substrings into tokens (usually ngrams) 4) index tokens (associate a unique int value with each token) 5) transform each sample using this index, either into a vector of ints or a dense float vector.
Some notes on passing Callables to customize splitting and normalization for
1) Any callable can be passed to this Layer, but if you want to serialize
this object you should only pass functions that are registered Keras
tf.keras.utils.register_keras_serializable for more
2) When using a custom callable for
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.
3) When using a custom callable for
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
["string to split", "another string to split"]. The callable should
return a Tensor with the first dimension containing the split tokens -
in this example, we should see something like
[["string", "to", "split],
["another", "string", "to", "split"]]. This makes the callable site
natively compatible with
max_tokens: The maximum size of the vocabulary for this layer. If None, there is no cap on the size of the vocabulary.
standardize: Optional specification for standardization to apply to the input text. Values can be None (no standardization), 'lower_and_strip_punctuation' (lowercase and remove punctuation) or a Callable. Default is 'lower_and_strip_punctuation'.
split: Optional specification for splitting the input text. Values can be None (no splitting), 'whitespace' (split on ASCII whitespace), or a Callable. The default is 'whitespace'.
ngrams: Optional specification for ngrams to create from the possibly-split input text. Values can be 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.
output_mode: Optional specification for the output of the layer. Values can be "int", "binary", "count" or "tf-idf", configuring the layer as follows: "int": Outputs integer indices, one integer index per split string token. "binary": 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": As "binary", but the int array contains a count of the number of times the token at that index appeared in the batch item. "tf-idf": As "binary", but the TF-IDF algorithm is applied to find the value in each token slot.
output_sequence_length: Only valid in INT mode. If set, the output will have its time dimension padded or truncated to exactly
output_sequence_lengthvalues, resulting in a tensor of shape [batch_size, output_sequence_length] regardless of how many tokens resulted from the splitting step. Defaults to None.
pad_to_max_tokens: Only valid in "binary", "count", and "tf-idf" modes. If True, the output will have its feature axis padded to
max_tokenseven 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 True.
This example instantiates a TextVectorization layer that lowercases text, splits on whitespace, strips punctuation, and outputs integer vocab indices.
max_features = 5000 # Maximum vocab size. max_len = 40 # Sequence length to pad the outputs to. # Create the layer. vectorize_layer = text_vectorization.TextVectorization( max_tokens=max_features, output_mode='int', output_sequence_length=max_len) # Now that the vocab layer has been created, call `adapt` on the text-only # dataset to create the vocabulary. You don't have to batch, but for large # datasets this means we're not keeping spare copies of the dataset in memory. vectorize_layer.adapt(text_dataset.batch(64)) # Create the model that uses the vectorize text layer model = tf.keras.models.Sequential() # Start by creating an explicit input layer. It needs to have a shape of (1,) # (because we need to guarantee that there is exactly one string input per # batch), and the dtype needs to be 'string'. model.add(tf.keras.Input(shape=(1,), dtype=tf.string)) # The first layer in our model is the vectorization layer. After this layer, # we have a tensor of shape (batch_size, max_len) containing vocab indices. model.add(vectorize_layer) # Next, we add a layer to map those vocab indices into a space of # dimensionality 'embedding_dims'. Note that we're using max_features+1 here, # since there's an OOV token that gets added to the vocabulary in # vectorize_layer. model.add(tf.keras.layers.Embedding(max_features+1, embedding_dims)) # At this point, you have embedded float data representing your tokens, and # can add whatever other layers you need to create your model.
adapt( data, reset_state=True )
Fits the state of the preprocessing layer to the dataset.
Overrides the default adapt method to apply relevant preprocessing to the inputs before passing to the combiner.
data: The data to train on. It can be passed either as a tf.data Dataset, or as a numpy array.
reset_state: Optional argument specifying whether to clear the state of the layer at the start of the call to
adapt. This must be True for this layer, which does not support repeated calls to
set_vocabulary( vocab, df_data=None, oov_df_value=None, append=False )
Sets vocabulary (and optionally document frequency) data for this layer.
This method sets the vocabulary and DF data for this layer directly, instead of analyzing a dataset through 'adapt'. It should be used whenever the vocab (and optionally document frequency) information is already known. If vocabulary data is already present in the layer, this method will either replace it, if 'append' is set to False, or append to it (if 'append' is set to True).
vocab: An array of string tokens.
df_data: An array of document frequency data. Only necessary if the layer output_mode is TFIDF.
oov_df_value: The document frequency of the OOV token. Only necessary if output_mode is TFIDF. OOV data is optional when appending additional data in TFIDF mode; if an OOV value is supplied it will overwrite the existing OOV value.
append: Whether to overwrite or append any existing vocabulary data.
ValueError: If there are too many inputs, the inputs do not match, or input data is missing.
RuntimeError: If the vocabulary cannot be set when this function is called. This happens when "binary", "count", and "tfidf" modes, if "pad_to_max_tokens" is False and the layer itself has already been called.