text_to_word_sequence
keras.preprocessing.text.text_to_word_sequence(text,
filters=base_filter(), lower=True, split=" ")
Split a sentence into a list of words.
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Return: List of words (str).
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Arguments:
- text: str.
- filters: list (or concatenation) of characters to filter out, such as punctuation. Default: base_filter(), includes basic punctuation, tabs, and newlines.
- lower: boolean. Whether to set the text to lowercase.
- split: str. Separator for word splitting.
one_hot
keras.preprocessing.text.one_hot(text, n,
filters=base_filter(), lower=True, split=" ")
One-hot encode a text into a list of word indexes in a vocabulary of size n.
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Return: List of integers in [1, n]. Each integer encodes a word (unicity non-guaranteed).
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Arguments: Same as
text_to_word_sequence
above.- n: int. Size of vocabulary.
Tokenizer
keras.preprocessing.text.Tokenizer(nb_words=None, filters=base_filter(),
lower=True, split=" ")
Class for vectorizing texts, or/and turning texts into sequences (=list of word indexes, where the word of rank i in the dataset (starting at 1) has index i).
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Arguments: Same as
text_to_word_sequence
above.- nb_words: None or int. Maximum number of words to work with (if set, tokenization will be restricted to the top nb_words most common words in the dataset).
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Methods:
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fit_on_texts(texts):
- Arguments:
- texts: list of texts to train on.
- Arguments:
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texts_to_sequences(texts)
- Arguments:
- texts: list of texts to turn to sequences.
- Return: list of sequences (one per text input).
- Arguments:
-
texts_to_sequences_generator(texts): generator version of the above.
- Return: yield one sequence per input text.
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texts_to_matrix(texts):
- Return: numpy array of shape
(len(texts), nb_words)
. - Arguments:
- texts: list of texts to vectorize.
- mode: one of "binary", "count", "tfidf", "freq" (default: "binary").
- Return: numpy array of shape
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fit_on_sequences(sequences):
- Arguments:
- sequences: list of sequences to train on.
- Arguments:
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sequences_to_matrix(sequences):
- Return: numpy array of shape
(len(sequences), nb_words)
. - Arguments:
- sequences: list of sequences to vectorize.
- mode: one of "binary", "count", "tfidf", "freq" (default: "binary").
- Return: numpy array of shape
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Attributes:
- word_counts: dictionary mapping words (str) to the number of times they appeared on during fit. Only set after fit_on_texts was called.
- word_docs: dictionary mapping words (str) to the number of documents/texts they appeared on during fit. Only set after fit_on_texts was called.
- word_index: dictionary mapping words (str) to their rank/index (int). Only set after fit_on_texts was called.
- document_count: int. Number of documents (texts/sequences) the tokenizer was trained on. Only set after fit_on_texts or fit_on_sequences was called.