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144 lines
4.2 KiB
Python
144 lines
4.2 KiB
Python
import re
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import html.entities
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import typing as t
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import nltk.sentiment.util
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from .base import BaseTokenizer
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class PottsTokenizer(BaseTokenizer):
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"""
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Tokenizer based on `Christopher Potts' tokenizer <http://sentiment.christopherpotts.net/tokenizing.html>`_, released in 2011.
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This class is released under the Creative Commons Attribution-NonCommercial-ShareAlike 3.0 Unported License: https://creativecommons.org/licenses/by-nc-sa/3.0/ .
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"""
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# noinspection RegExpRepeatedSpace
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# language=pythonregexp
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emoticon_re_string = r"""[<>]?[:;=8][\-o*']?[)\](\[dDpP/:}{@|\\]"""
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emoticon_re = re.compile(emoticon_re_string)
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words_re_string = "(" + "|".join([
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# Emoticons:
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emoticon_re_string
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,
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# Phone numbers:
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# language=pythonregexp
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r"""(?:[+]?[01][\s.-]*)?(?:[(]?\d{3}[\s.)-]*)?\d{3}[\-\s.]*\d{4}"""
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,
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# HTML tags:
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# language=pythonregexp
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r"""<[^>]+>"""
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,
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# Twitter username:
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# language=pythonregexp
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r"""@[\w_]+"""
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,
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# Twitter hashtags:
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# language=pythonregexp
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r"""#+[\w_]+[\w'_-]*[\w_]+"""
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,
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# Words with apostrophes or dashes
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# language=pythonregexp
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r"""[a-z][a-z'_-]+[a-z]"""
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,
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# Numbers, including fractions, decimals
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# language=pythonregexp
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r"""[+-]?\d+(?:[,/.:-]\d+)?"""
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,
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# Words without apostrophes or dashes
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# language=pythonregexp
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r"""[\w_]+"""
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,
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# Ellipsis dots
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# language=pythonregexp
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r"""[.](?:\s*[.])+"""
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,
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# Everything else that isn't whitespace
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# language=pythonregexp
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r"""\S+"""
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]) + ")"
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words_re = re.compile(words_re_string, re.I)
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# language=pythonregexp
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digit_re_string = r"&#\d+;"
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digit_re = re.compile(digit_re_string)
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# language=pythonregexp
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alpha_re_string = r"&\w+;"
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alpha_re = re.compile(alpha_re_string)
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amp = "&"
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@classmethod
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def html_entities_to_chr(cls, s: str) -> str:
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"""
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Internal metod that seeks to replace all the HTML entities in s with their corresponding characters.
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"""
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# First the digits:
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ents = set(cls.digit_re.findall(s))
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if len(ents) > 0:
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for ent in ents:
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entnum = ent[2:-1]
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try:
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entnum = int(entnum)
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s = s.replace(ent, chr(entnum))
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except (ValueError, KeyError):
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pass
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# Now the alpha versions:
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ents = set(cls.alpha_re.findall(s))
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ents = filter((lambda x: x != cls.amp), ents)
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for ent in ents:
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entname = ent[1:-1]
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try:
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s = s.replace(ent, chr(html.entities.name2codepoint[entname]))
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except (ValueError, KeyError):
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pass
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s = s.replace(cls.amp, " and ")
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return s
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@classmethod
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def lower_but_preserve_emoticons(cls, word):
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"""
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Internal method which lowercases the word if it does not match `.emoticon_re`.
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"""
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if cls.emoticon_re.search(word):
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return word
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else:
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return word.lower()
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def tokenize(self, text: str) -> t.Iterator[str]:
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# Fix HTML character entitites
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text = self.html_entities_to_chr(text)
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# Tokenize
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tokens = self.words_re.findall(text)
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# Possible alter the case, but avoid changing emoticons like :D into :d:
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tokens = map(self.lower_but_preserve_emoticons, tokens)
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# Convert to a list (sigh) the iterator
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tokens = list(tokens)
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# Return the result
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return tokens
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class PottsTokenizerWithNegation(PottsTokenizer):
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"""
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Version of `.PottsTokenizer` which after tokenizing applies `nltk.sentiment.util.mark_negation`.
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"""
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def tokenize(self, text: str) -> t.Iterator[str]:
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# Apply the base tokenization
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tokens = super().tokenize(text)
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# Use nltk to mark negation
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nltk.sentiment.util.mark_negation(tokens, shallow=True)
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# Return the result
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return tokens
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__all__ = (
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"PottsTokenizer",
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"PottsTokenizerWithNegation",
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)
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