Source code for pythainlp.tokenize.core

# -*- coding: utf-8 -*-
# SPDX-FileCopyrightText: 2016-2024 PyThaiNLP Project
# SPDX-License-Identifier: Apache-2.0
"""
Generic functions of tokenizers
"""
import re
from typing import Iterable, List, Union

from pythainlp.tokenize import (
    DEFAULT_SENT_TOKENIZE_ENGINE,
    DEFAULT_SUBWORD_TOKENIZE_ENGINE,
    DEFAULT_SYLLABLE_DICT_TRIE,
    DEFAULT_SYLLABLE_TOKENIZE_ENGINE,
    DEFAULT_WORD_DICT_TRIE,
    DEFAULT_WORD_TOKENIZE_ENGINE,
)
from pythainlp.tokenize._utils import (
    apply_postprocessors,
    rejoin_formatted_num,
    strip_whitespace,
)
from pythainlp.util.trie import Trie, dict_trie


[docs]def clause_tokenize(doc: List[str]) -> List[List[str]]: """ Clause tokenizer. (or Clause segmentation) Tokenizes running word list into list of clauses (list of strings). Split by CRF trained on Blackboard Treebank. :param str doc: word list to be clause tokenized :return: list of clauses :rtype: list[list[str]] :Example: :: from pythainlp.tokenize import clause_tokenize clause_tokenize(["ฉัน","นอน","และ","คุณ","เล่น","มือถือ","ส่วน","น้อง","เขียน","โปรแกรม"]) # [['ฉัน', 'นอน'], # ['และ', 'คุณ', 'เล่น', 'มือถือ'], # ['ส่วน', 'น้อง', 'เขียน', 'โปรแกรม']] """ from pythainlp.tokenize.crfcls import segment return segment(doc)
[docs]def word_detokenize( segments: Union[List[List[str]], List[str]], output: str = "str" ) -> Union[List[str], str]: """ Word detokenizer. This function will detokenize the list of words in each sentence into text. :param str segments: List of sentences, each with a list of words. :param str output: the output type (str or list) :return: the Thai text :rtype: Union[str,List[str]] :Example: :: from pythainlp.tokenize import word_detokenize print(word_detokenize(["เรา", "เล่น"])) # output: เราเล่น """ list_all = [] if isinstance(segments[0], str): segments = [segments] from pythainlp import thai_characters for i, s in enumerate(segments): list_sents = [] add_index = [] space_index = [] mark_index = [] for j, w in enumerate(s): if j > 0: # previous word p_w = s[j - 1] # if w is number or other language and is not space if ( w[0] not in thai_characters and not w.isspace() and not p_w.isspace() ): list_sents.append(" ") add_index.append(j) # if previous word is number or other language and is not space elif p_w[0] not in thai_characters and not p_w.isspace(): list_sents.append(" ") add_index.append(j) # if word is Thai iteration mark elif w == "ๆ": if not p_w.isspace(): list_sents.append(" ") mark_index.append(j) elif w.isspace() and j - 1 not in space_index: space_index.append(j) elif j - 1 in mark_index: list_sents.append(" ") list_sents.append(w) list_all.append(list_sents) if output == "list": return list_all text = [] for i in list_all: text.append("".join(i)) return " ".join(text)
[docs]def word_tokenize( text: str, custom_dict: Trie = Trie([]), engine: str = DEFAULT_WORD_TOKENIZE_ENGINE, keep_whitespace: bool = True, join_broken_num: bool = True, ) -> List[str]: """ Word tokenizer. Tokenizes running text into words (list of strings). :param str text: text to be tokenized :param str engine: name of the tokenizer to be used :param pythainlp.util.Trie custom_dict: dictionary trie (some engine may not support) :param bool keep_whitespace: True to keep whitespace, a common mark for end of phrase in Thai. Otherwise, whitespace is omitted. :param bool join_broken_num: True to rejoin formatted numeric that could be wrongly separated. Otherwise, formatted numeric could be wrongly separated. :return: list of words :rtype: List[str] **Options for engine** * *attacut* - wrapper for `AttaCut <https://github.com/PyThaiNLP/attacut>`_., learning-based approach * *deepcut* - wrapper for `DeepCut <https://github.com/rkcosmos/deepcut>`_, learning-based approach * *icu* - wrapper for a word tokenizer in `PyICU <https://gitlab.pyicu.org/main/pyicu>`_., from ICU (International Components for Unicode), dictionary-based * *longest* - dictionary-based, longest matching * *mm* - "multi-cut", dictionary-based, maximum matching * *nercut* - dictionary-based, maximal matching, constrained by Thai Character Cluster (TCC) boundaries, combining tokens that are parts of the same named-entity * *newmm* (default) - "new multi-cut", dictionary-based, maximum matching, constrained by Thai Character Cluster (TCC) boundaries with improved TCC rules that are used in newmm. * *newmm-safe* - newmm, with a mechanism to avoid long processing time for text with continuously ambiguous breaking points * *nlpo3* - wrapper for a word tokenizer in `nlpO3 <https://github.com/PyThaiNLP/nlpo3>`_., adaptation of newmm in Rust (2.5x faster) * *oskut* - wrapper for `OSKut <https://github.com/mrpeerat/OSKut>`_., Out-of-domain StacKed cut for Word Segmentation * *sefr_cut* - wrapper for `SEFR CUT <https://github.com/mrpeerat/SEFR_CUT>`_., Stacked Ensemble Filter and Refine for Word Segmentation * *tltk* - wrapper for `TLTK <https://pypi.org/project/tltk/>`_., maximum collocation approach :Note: - The **custom_dict** parameter only works for \ *deepcut*, *longest*, *newmm*, and *newmm-safe* engines. :Example: Tokenize text with different tokenizers:: from pythainlp.tokenize import word_tokenize text = "โอเคบ่พวกเรารักภาษาบ้านเกิด" word_tokenize(text, engine="newmm") # output: ['โอเค', 'บ่', 'พวกเรา', 'รัก', 'ภาษา', 'บ้านเกิด'] word_tokenize(text, engine='attacut') # output: ['โอเค', 'บ่', 'พวกเรา', 'รัก', 'ภาษา', 'บ้านเกิด'] Tokenize text with whitespace omitted:: text = "วรรณกรรม ภาพวาด และการแสดงงิ้ว " word_tokenize(text, engine="newmm") # output: # ['วรรณกรรม', ' ', 'ภาพวาด', ' ', 'และ', 'การแสดง', 'งิ้ว', ' '] word_tokenize(text, engine="newmm", keep_whitespace=False) # output: ['วรรณกรรม', 'ภาพวาด', 'และ', 'การแสดง', 'งิ้ว'] Join broken formatted numeric (e.g. time, decimals, IP addresses):: text = "เงิน1,234บาท19:32น 127.0.0.1" word_tokenize(text, engine="attacut", join_broken_num=False) # output: # ['เงิน', '1', ',', '234', 'บาท', '19', ':', '32น', ' ', # '127', '.', '0', '.', '0', '.', '1'] word_tokenize(text, engine="attacut", join_broken_num=True) # output: # ['เงิน', '1,234', 'บาท', '19:32น', ' ', '127.0.0.1'] Tokenize with default and custom dictionaries:: from pythainlp.corpus.common import thai_words from pythainlp.tokenize import dict_trie text = 'ชินโซ อาเบะ เกิด 21 กันยายน' word_tokenize(text, engine="newmm") # output: # ['ชิน', 'โซ', ' ', 'อา', 'เบะ', ' ', # 'เกิด', ' ', '21', ' ', 'กันยายน'] custom_dict_japanese_name = set(thai_words() custom_dict_japanese_name.add('ชินโซ') custom_dict_japanese_name.add('อาเบะ') trie = dict_trie(dict_source=custom_dict_japanese_name) word_tokenize(text, engine="newmm", custom_dict=trie)) # output: # ['ชินโซ', ' ', 'อาเบะ', ' ', # 'เกิด', ' ', '21', ' ', 'กันยายน'] """ if not text or not isinstance(text, str): return [] segments = [] if engine in ("newmm", "onecut"): from pythainlp.tokenize.newmm import segment segments = segment(text, custom_dict) elif engine == "newmm-safe": from pythainlp.tokenize.newmm import segment segments = segment(text, custom_dict, safe_mode=True) elif engine == "attacut": from pythainlp.tokenize.attacut import segment segments = segment(text) elif engine == "longest": from pythainlp.tokenize.longest import segment segments = segment(text, custom_dict) elif engine in ("mm", "multi_cut"): from pythainlp.tokenize.multi_cut import segment segments = segment(text, custom_dict) elif engine == "deepcut": # deepcut can optionally use dictionary from pythainlp.tokenize.deepcut import segment if custom_dict: custom_dict = list(custom_dict) segments = segment(text, custom_dict) else: segments = segment(text) elif engine == "icu": from pythainlp.tokenize.pyicu import segment segments = segment(text) elif engine == "nercut": from pythainlp.tokenize.nercut import segment segments = segment(text) elif engine == "sefr_cut": from pythainlp.tokenize.sefr_cut import segment segments = segment(text) elif engine == "tltk": from pythainlp.tokenize.tltk import segment segments = segment(text) elif engine == "oskut": from pythainlp.tokenize.oskut import segment segments = segment(text) elif engine == "nlpo3": from pythainlp.tokenize.nlpo3 import segment # Currently cannot handle custom_dict from inside word_tokenize(), # due to difference in type. #if isinstance(custom_dict, str): # segments = segment(text, custom_dict=custom_dict) #elif not isinstance(custom_dict, str) and not custom_dict: # raise ValueError( # f"""Tokenizer \"{engine}\": # custom_dict must be a str. # It is a dictionary name as assigned with load_dict(). # See pythainlp.tokenize.nlpo3.load_dict()""" # ) #else: # segments = segment(text) segments = segment(text) else: raise ValueError( f"""Tokenizer \"{engine}\" not found. It might be a typo; if not, please consult our document.""" ) postprocessors = [] if join_broken_num: postprocessors.append(rejoin_formatted_num) if not keep_whitespace: postprocessors.append(strip_whitespace) segments = apply_postprocessors(segments, postprocessors) return segments
[docs]def sent_tokenize( text: str, engine: str = DEFAULT_SENT_TOKENIZE_ENGINE, keep_whitespace: bool = True, ) -> List[str]: """ Sentence tokenizer. Tokenizes running text into "sentences" :param str text: the text to be tokenized :param str engine: choose among *'crfcut'*, *'whitespace'*, \ *'whitespace+newline'* :return: list of split sentences :rtype: list[str] **Options for engine** * *crfcut* - (default) split by CRF trained on TED dataset * *thaisum* - The implementation of sentence segmenter from \ Nakhun Chumpolsathien, 2020 * *tltk* - split by `TLTK <https://pypi.org/project/tltk/>`_., * *wtp* - split by `wtpsplitaxe <https://github.com/bminixhofer/wtpsplit>`_., \ It supports many sizes of models. You can use ``wtp`` to use mini model, \ ``wtp-tiny`` to use ``wtp-bert-tiny`` model (default), \ ``wtp-mini`` to use ``wtp-bert-mini`` model, \ ``wtp-base`` to use ``wtp-canine-s-1l`` model, \ and ``wtp-large`` to use ``wtp-canine-s-12l`` model. * *whitespace+newline* - split by whitespace and newline. * *whitespace* - split by whitespace, specifically with \ :class:`regex` pattern ``r" +"`` :Example: Split the text based on *whitespace*:: from pythainlp.tokenize import sent_tokenize sentence_1 = "ฉันไปประชุมเมื่อวันที่ 11 มีนาคม" sentence_2 = "ข้าราชการได้รับการหมุนเวียนเป็นระยะ \\ และได้รับมอบหมายให้ประจำในระดับภูมิภาค" sent_tokenize(sentence_1, engine="whitespace") # output: ['ฉันไปประชุมเมื่อวันที่', '11', 'มีนาคม'] sent_tokenize(sentence_2, engine="whitespace") # output: ['ข้าราชการได้รับการหมุนเวียนเป็นระยะ', # '\\nและได้รับมอบหมายให้ประจำในระดับภูมิภาค'] Split the text based on *whitespace* and *newline*:: sentence_1 = "ฉันไปประชุมเมื่อวันที่ 11 มีนาคม" sentence_2 = "ข้าราชการได้รับการหมุนเวียนเป็นระยะ \\ และได้รับมอบหมายให้ประจำในระดับภูมิภาค" sent_tokenize(sentence_1, engine="whitespace+newline") # output: ['ฉันไปประชุมเมื่อวันที่', '11', 'มีนาคม'] sent_tokenize(sentence_2, engine="whitespace+newline") # output: ['ข้าราชการได้รับการหมุนเวียนเป็นระยะ', '\\nและได้รับมอบหมายให้ประจำในระดับภูมิภาค'] Split the text using CRF trained on TED dataset:: sentence_1 = "ฉันไปประชุมเมื่อวันที่ 11 มีนาคม" sentence_2 = "ข้าราชการได้รับการหมุนเวียนเป็นระยะ \\ และเขาได้รับมอบหมายให้ประจำในระดับภูมิภาค" sent_tokenize(sentence_1, engine="crfcut") # output: ['ฉันไปประชุมเมื่อวันที่ 11 มีนาคม'] sent_tokenize(sentence_2, engine="crfcut") # output: ['ข้าราชการได้รับการหมุนเวียนเป็นระยะ ', 'และเขาได้รับมอบหมายให้ประจำในระดับภูมิภาค'] """ if not text or not isinstance(text, str): return [] segments = [] if engine == "crfcut": from pythainlp.tokenize.crfcut import segment segments = segment(text) elif engine == "whitespace": segments = re.split(r" +", text, flags=re.U) elif engine == "whitespace+newline": segments = text.split() elif engine == "tltk": from pythainlp.tokenize.tltk import sent_tokenize as segment segments = segment(text) elif engine == "thaisum": from pythainlp.tokenize.thaisumcut import ( ThaiSentenceSegmentor as segmentor, ) segment = segmentor() segments = segment.split_into_sentences(text) elif engine.startswith("wtp"): if "-" not in engine: _size = "mini" else: _size = engine.split("-")[-1] from pythainlp.tokenize.wtsplit import tokenize as segment segments = segment(text, size=_size, tokenize="sentence") else: raise ValueError( f"""Tokenizer \"{engine}\" not found. It might be a typo; if not, please consult our document.""" ) if not keep_whitespace: segments = strip_whitespace(segments) return segments
[docs]def paragraph_tokenize( text: str, engine: str = "wtp-mini", paragraph_threshold: float = 0.5, style: str = "newline", ) -> List[List[str]]: """ Paragraph tokenizer. Tokenizes text into paragraphs. :param str text: text to be tokenized :param str engine: the name of paragraph tokenizer :return: list of paragraphs :rtype: List[List[str]] **Options for engine** * *wtp* - split by `wtpsplitaxe <https://github.com/bminixhofer/wtpsplit>`_., \ It supports many sizes of models. You can use ``wtp`` to use mini model, \ ``wtp-tiny`` to use ``wtp-bert-tiny`` model (default), \ ``wtp-mini`` to use ``wtp-bert-mini`` model, \ ``wtp-base`` to use ``wtp-canine-s-1l`` model, \ and ``wtp-large`` to use ``wtp-canine-s-12l`` model. :Example: Split the text based on *wtp*:: from pythainlp.tokenize import paragraph_tokenize sent = ( "(1) บทความนี้ผู้เขียนสังเคราะห์ขึ้นมาจากผลงานวิจัยที่เคยทำมาในอดีต" +" มิได้ทำการศึกษาค้นคว้าใหม่อย่างกว้างขวางแต่อย่างใด" +" จึงใคร่ขออภัยในความบกพร่องทั้งปวงมา ณ ที่นี้" ) paragraph_tokenize(sent) # output: [ # ['(1) '], # [ # 'บทความนี้ผู้เขียนสังเคราะห์ขึ้นมาจากผลงานวิจัยที่เคยทำมาในอดีต ', # 'มิได้ทำการศึกษาค้นคว้าใหม่อย่างกว้างขวางแต่อย่างใด ', # 'จึงใคร่ขออภัยในความบกพร่องทั้งปวงมา ', # 'ณ ที่นี้' # ]] """ if engine.startswith("wtp"): if "-" not in engine: size = "mini" else: size = engine.split("-")[-1] from pythainlp.tokenize.wtsplit import tokenize as segment segments = segment( text, size=size, tokenize="paragraph", paragraph_threshold=paragraph_threshold, style=style, ) else: raise ValueError( f"""Tokenizer \"{engine}\" not found. It might be a typo; if not, please consult our document.""" ) return segments
[docs]def subword_tokenize( text: str, engine: str = DEFAULT_SUBWORD_TOKENIZE_ENGINE, keep_whitespace: bool = True, ) -> List[str]: """ Subword tokenizer for tokenizing text into units smaller than syllables. Tokenizes text into inseparable units of Thai contiguous characters, namely `Thai Character Clusters (TCCs) \ <https://www.researchgate.net/publication/2853284_Character_Cluster_Based_Thai_Information_Retrieval>`_ TCCs are units based on Thai spelling features that could not be separated any character further such as 'ก็', 'จะ', 'ไม่', and 'ฝา'. If the following units are separated, they could not be spelled out. This function applies TCC rules to tokenize the text into the smallest units. For example, the word 'ขนมชั้น' would be tokenized into 'ข', 'น', 'ม', and 'ชั้น'. :param str text: text to be tokenized :param str engine: the name of subword tokenizer :param bool keep_whitespace: keep whitespace :return: list of subwords :rtype: List[str] **Options for engine** * *dict* - newmm word tokenizer with a syllable dictionary * *etcc* - Enhanced Thai Character Cluster (Inrut et al. 2001) * *han_solo* - CRF syllable segmenter for Thai that can work in the \ Thai social media domain. See `PyThaiNLP/Han-solo \ <https://github.com/PyThaiNLP/Han-solo>`_. * *ssg* - CRF syllable segmenter for Thai. See `ponrawee/ssg \ <https://github.com/ponrawee/ssg>`_. * *tcc* (default) - Thai Character Cluster (Theeramunkong et al. 2000) * *tcc_p* - Thai Character Cluster + improved rules that are used in newmm * *tltk* - syllable tokenizer from tltk. See `tltk \ <https://pypi.org/project/tltk/>`_. * *wangchanberta* - SentencePiece from wangchanberta model :Example: Tokenize text into subwords based on *tcc*:: from pythainlp.tokenize import subword_tokenize text_1 = "ยุคเริ่มแรกของ ราชวงศ์หมิง" text_2 = "ความแปลกแยกและพัฒนาการ" subword_tokenize(text_1, engine='tcc') # output: ['ยุ', 'ค', 'เริ่ม', 'แร', 'ก', # 'ข', 'อ', 'ง', ' ', 'รา', 'ช', 'ว', 'ง', # 'ศ', '์', 'ห', 'มิ', 'ง'] subword_tokenize(text_2, engine='tcc') # output: ['ค', 'วา', 'ม', 'แป', 'ล', 'ก', 'แย', 'ก', 'และ', 'พัฒ','นา', 'กา', 'ร'] Tokenize text into subwords based on *etcc*:: text_1 = "ยุคเริ่มแรกของ ราชวงศ์หมิง" text_2 = "ความแปลกแยกและพัฒนาการ" subword_tokenize(text_1, engine='etcc') # output: ['ยุคเริ่มแรกของ ราชวงศ์หมิง'] subword_tokenize(text_2, engine='etcc') # output: ['ความแปลกแยกและ', 'พัฒ', 'นาการ'] Tokenize text into subwords based on *wangchanberta*:: text_1 = "ยุคเริ่มแรกของ ราชวงศ์หมิง" text_2 = "ความแปลกแยกและพัฒนาการ" subword_tokenize(text_1, engine='wangchanberta') # output: ['▁', 'ยุค', 'เริ่มแรก', 'ของ', '▁', 'ราชวงศ์', 'หมิง'] subword_tokenize(text_2, engine='wangchanberta') # output: ['▁ความ', 'แปลก', 'แยก', 'และ', 'พัฒนาการ'] """ if not text or not isinstance(text, str): return [] segments = [] if engine == "tcc": from pythainlp.tokenize.tcc import segment elif engine == "tcc_p": from pythainlp.tokenize.tcc_p import segment elif engine == "etcc": from pythainlp.tokenize.etcc import segment elif engine == "wangchanberta": from pythainlp.wangchanberta import segment elif engine == "dict": # use syllable dictionary words = word_tokenize(text) for word in words: segments.extend( word_tokenize( text=word, custom_dict=DEFAULT_SYLLABLE_DICT_TRIE ) ) elif engine == "ssg": from pythainlp.tokenize.ssg import segment elif engine == "tltk": from pythainlp.tokenize.tltk import syllable_tokenize as segment elif engine == "han_solo": from pythainlp.tokenize.han_solo import segment elif engine == "phayathai": from pythainlp.phayathaibert import segment else: raise ValueError( f"""Tokenizer \"{engine}\" not found. It might be a typo; if not, please consult our document.""" ) if not segments: segments = segment(text) if not keep_whitespace: segments = strip_whitespace(segments) return segments
[docs]def syllable_tokenize( text: str, engine: str = DEFAULT_SYLLABLE_TOKENIZE_ENGINE, keep_whitespace: bool = True, ) -> List[str]: """ Syllable tokenizer Tokenizes text into inseparable units of Thai syllables. :param str text: text to be tokenized :param str engine: the name of syllable tokenizer :param bool keep_whitespace: keep whitespace :return: list of subwords :rtype: List[str] **Options for engine** * *dict* - newmm word tokenizer with a syllable dictionary * *han_solo* - CRF syllable segmenter for Thai that can work in the \ Thai social media domain. See `PyThaiNLP/Han-solo \ <https://github.com/PyThaiNLP/Han-solo>`_. * *ssg* - CRF syllable segmenter for Thai. See `ponrawee/ssg \ <https://github.com/ponrawee/ssg>`_. * *tltk* - syllable tokenizer from tltk. See `tltk \ <https://pypi.org/project/tltk/>`_. """ if engine not in ["dict", "han_solo", "ssg", "tltk"]: raise ValueError( f"""Tokenizer \"{engine}\" not found. It might be a typo; if not, please consult our document.""" ) return subword_tokenize( text=text, engine=engine, keep_whitespace=keep_whitespace )
[docs]class Tokenizer: """ Tokenizer class for a custom tokenizer. This class allows users to pre-define custom dictionary along with tokenizer and encapsulate them into one single object. It is an wrapper for both functions, that are :func:`pythainlp.tokenize.word_tokenize`, and :func:`pythainlp.util.dict_trie` :Example: Tokenizer object instantiated with :class:`pythainlp.util.Trie`:: from pythainlp.tokenize import Tokenizer from pythainlp.corpus.common import thai_words from pythainlp.util import dict_trie custom_words_list = set(thai_words()) custom_words_list.add('อะเฟเซีย') custom_words_list.add('Aphasia') trie = dict_trie(dict_source=custom_words_list) text = "อะเฟเซีย (Aphasia*) เป็นอาการผิดปกติของการพูด" _tokenizer = Tokenizer(custom_dict=trie, engine='newmm') _tokenizer.word_tokenize(text) # output: ['อะเฟเซีย', ' ', '(', 'Aphasia', ')', ' ', 'เป็น', 'อาการ', 'ผิดปกติ', 'ของ', 'การ', 'พูด'] Tokenizer object instantiated with a list of words:: text = "อะเฟเซีย (Aphasia) เป็นอาการผิดปกติของการพูด" _tokenizer = Tokenizer(custom_dict=list(thai_words()), engine='newmm') _tokenizer.word_tokenize(text) # output: # ['อะ', 'เฟเซีย', ' ', '(', 'Aphasia', ')', ' ', 'เป็น', 'อาการ', # 'ผิดปกติ', 'ของ', 'การ', 'พูด'] Tokenizer object instantiated with a file path containing a list of words separated with *newline* and explicitly setting a new tokenizer after initiation:: PATH_TO_CUSTOM_DICTIONARY = './custom_dictionary.txtt' # write a file with open(PATH_TO_CUSTOM_DICTIONARY, 'w', encoding='utf-8') as f: f.write('อะเฟเซีย\\nAphasia\\nผิด\\nปกติ') text = "อะเฟเซีย (Aphasia) เป็นอาการผิดปกติของการพูด" # initiate an object from file with `attacut` as tokenizer _tokenizer = Tokenizer(custom_dict=PATH_TO_CUSTOM_DICTIONARY, \\ engine='attacut') _tokenizer.word_tokenize(text) # output: # ['อะเฟเซีย', ' ', '(', 'Aphasia', ')', ' ', 'เป็น', 'อาการ', 'ผิด', # 'ปกติ', 'ของ', 'การ', 'พูด'] # change tokenizer to `newmm` _tokenizer.set_tokenizer_engine(engine='newmm') _tokenizer.word_tokenize(text) # output: # ['อะเฟเซีย', ' ', '(', 'Aphasia', ')', ' ', 'เป็นอาการ', 'ผิด', # 'ปกติ', 'ของการพูด'] """
[docs] def __init__( self, custom_dict: Union[Trie, Iterable[str], str] = [], engine: str = "newmm", keep_whitespace: bool = True, join_broken_num: bool = True, ): """ Initialize tokenizer object. :param str custom_dict: a file path, a list of vocaburaies* to be used to create a trie, or an instantiated :class:`pythainlp.util.Trie` object. :param str engine: choose between different options of tokenizer engines (i.e. *newmm*, *mm*, *longest*, *deepcut*) :param bool keep_whitespace: True to keep whitespace, a common mark for end of phrase in Thai """ self.__trie_dict = Trie([]) if custom_dict: self.__trie_dict = dict_trie(custom_dict) else: self.__trie_dict = DEFAULT_WORD_DICT_TRIE self.__engine = engine if self.__engine not in ["newmm", "mm", "longest", "deepcut"]: raise NotImplementedError( """ The Tokenizer class is not support %s for custom tokenizer """ % self.__engine ) self.__keep_whitespace = keep_whitespace self.__join_broken_num = join_broken_num
[docs] def word_tokenize(self, text: str) -> List[str]: """ Main tokenization function. :param str text: text to be tokenized :return: list of words, tokenized from the text :rtype: list[str] """ return word_tokenize( text, custom_dict=self.__trie_dict, engine=self.__engine, keep_whitespace=self.__keep_whitespace, join_broken_num=self.__join_broken_num, )
[docs] def set_tokenize_engine(self, engine: str) -> None: """ Set the tokenizer's engine. :param str engine: choose between different options of tokenizer engines (i.e. *newmm*, *mm*, *longest*, *deepcut*) """ self.__engine = engine