from nose.tools import eq_, assert_almost_equal, assert_greater from wordfreq import tokenize, word_frequency def test_tokens(): # Let's test on some Chinese text that has unusual combinations of # syllables, because it is about an American vice-president. # # (He was the Chinese Wikipedia's featured article of the day when I # wrote this test.) hobart = '加勒特·霍巴特' # Garret Hobart, or "jiā lè tè huò bā tè". # He was the sixth American vice president to die in office. fact_simplified = '他是历史上第六位在任期内去世的美国副总统。' fact_traditional = '他是歷史上第六位在任期內去世的美國副總統。' # His name breaks into five pieces, with the only piece staying together # being the one that means 'Bart'. The dot is not included as a token. eq_( tokenize(hobart, 'zh'), ['加', '勒', '特', '霍', '巴特'] ) eq_( tokenize(fact_simplified, 'zh'), [ # he / is / in history / #6 / counter for people '他', '是', '历史上', '第六', '位', # during / term of office / in / die '在', '任期', '内', '去世', # of / U.S. / deputy / president '的', '美国', '副', '总统' ] ) # Jieba's original tokenizer knows a lot of names, it seems. eq_( tokenize(hobart, 'zh', external_wordlist=True), ['加勒特', '霍巴特'] ) # We get almost the same tokens from the sentence using Jieba's own # wordlist, but it tokenizes "in history" as two words and # "sixth person" as one. eq_( tokenize(fact_simplified, 'zh', external_wordlist=True), [ # he / is / history / in / sixth person '他', '是', '历史', '上', '第六位', # during / term of office / in / die '在', '任期', '内', '去世', # of / U.S. / deputy / president '的', '美国', '副', '总统' ] ) # You match the same tokens if you look it up in Traditional Chinese. eq_(tokenize(fact_simplified, 'zh'), tokenize(fact_traditional, 'zh')) assert_greater(word_frequency(fact_traditional, 'zh'), 0) def test_combination(): xiexie_freq = word_frequency('谢谢', 'zh') # "Thanks" assert_almost_equal( word_frequency('谢谢谢谢', 'zh'), xiexie_freq / 20 )