""" ========================= Original module docstring ========================= This code implements a basic, Twitter-aware tokenizer. A tokenizer is a function that splits a string of text into words. In Python terms, we map string and unicode objects into lists of unicode objects. There is not a single right way to do tokenizing. The best method depends on the application. This tokenizer is designed to be flexible and this easy to adapt to new domains and tasks. The basic logic is this: 1. The tuple regex_strings defines a list of regular expression strings. 2. The regex_strings strings are put, in order, into a compiled regular expression object called word_re. 3. The tokenization is done by word_re.findall(s), where s is the user-supplied string, inside the tokenize() method of the class Tokenizer. 4. When instantiating Tokenizer objects, there is a single option: preserve_case. By default, it is set to True. If it is set to False, then the tokenizer will downcase everything except for emoticons. The __main__ method illustrates by tokenizing a few examples. I've also included a Tokenizer method tokenize_random_tweet(). If the twitter library is installed (http://code.google.com/p/python-twitter/) and Twitter is cooperating, then it should tokenize a random English-language tweet. """ __author__ = "Christopher Potts" __copyright__ = "Copyright 2011, Christopher Potts" __credits__ = [] __license__ = "Creative Commons Attribution-NonCommercial-ShareAlike 3.0 Unported License: http://creativecommons.org/licenses/by-nc-sa/3.0/" __version__ = "1.0" __maintainer__ = "Christopher Potts" __email__ = "See the author's website" ###################################################################### import re import html.entities import typing as t import nltk.sentiment.util from .base import BaseTokenizer ###################################################################### # The following strings are components in the regular expression # that is used for tokenizing. It's important that phone_number # appears first in the final regex (since it can contain whitespace). # It also could matter that tags comes after emoticons, due to the # possibility of having text like # # <:| and some text >:) # # Most imporatantly, the final element should always be last, since it # does a last ditch whitespace-based tokenization of whatever is left. # This particular element is used in a couple ways, so we define it # with a name: emoticon_string = r""" (?: [<>]? [:;=8] # eyes [\-o\*\']? # optional nose [\)\]\(\[dDpP/\:\}\{@\|\\] # mouth | [\)\]\(\[dDpP/\:\}\{@\|\\] # mouth [\-o\*\']? # optional nose [:;=8] # eyes [<>]? )""" # The components of the tokenizer: regex_strings = ( # Phone numbers: r""" (?: (?: # (international) \+?[01] [\-\s.]* )? (?: # (area code) [\(]? \d{3} [\-\s.\)]* )? \d{3} # exchange [\-\s.]* \d{4} # base )""" , # Emoticons: emoticon_string , # HTML tags: r"""<[^>]+>""" , # Twitter username: r"""(?:@[\w_]+)""" , # Twitter hashtags: r"""(?:\#+[\w_]+[\w\'_\-]*[\w_]+)""" , # Remaining word types: r""" (?:[a-z][a-z'\-_]+[a-z]) # Words with apostrophes or dashes. | (?:[+\-]?\d+[,/.:-]\d+[+\-]?) # Numbers, including fractions, decimals. | (?:[\w_]+) # Words without apostrophes or dashes. | (?:\.(?:\s*\.){1,}) # Ellipsis dots. | (?:\S) # Everything else that isn't whitespace. """ ) ###################################################################### # This is the core tokenizing regex: word_re = re.compile(r"""(%s)""" % "|".join(regex_strings), re.VERBOSE | re.I | re.UNICODE) # The emoticon string gets its own regex so that we can preserve case for them as needed: emoticon_re = re.compile(regex_strings[1], re.VERBOSE | re.I | re.UNICODE) # These are for regularizing HTML entities to Unicode: html_entity_digit_re = re.compile(r"&#\d+;") html_entity_alpha_re = re.compile(r"&\w+;") amp = "&" ###################################################################### class PottsTokenizer(BaseTokenizer): """ Tokenizer based on `Christopher Potts' tokenizer `_. """ @staticmethod def __html2string(s: str) -> str: """ Internal metod that seeks to replace all the HTML entities in s with their corresponding unicode characters. """ # First the digits: ents = set(html_entity_digit_re.findall(s)) if len(ents) > 0: for ent in ents: entnum = ent[2:-1] try: entnum = int(entnum) s = s.replace(ent, chr(entnum)) except (ValueError, KeyError): pass # Now the alpha versions: ents = set(html_entity_alpha_re.findall(s)) ents = filter((lambda x : x != amp), ents) for ent in ents: entname = ent[1:-1] try: s = s.replace(ent, chr(html.entities.name2codepoint[entname])) except (ValueError, KeyError): pass s = s.replace(amp, " and ") return s def tokenize_builtins(self, text: str) -> t.Iterable[str]: # Fix HTML character entitites: s = self.__html2string(text) # Tokenize: words = word_re.findall(s) # Possible alter the case, but avoid changing emoticons like :D into :d: words = list(map(lambda x: x if emoticon_re.search(x) else x.lower(), words)) # Return the results return words class PottsTokenizerWithNegation(PottsTokenizer): def tokenize_builtins(self, text: str) -> t.Iterable[str]: words = super().tokenize_builtins(text) nltk.sentiment.util.mark_negation(words, shallow=True) return words __all__ = ( "PottsTokenizer", "PottsTokenizerWithNegation", )