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546 lines
24 KiB
Markdown
546 lines
24 KiB
Markdown
wordfreq is a Python library for looking up the frequencies of words in many
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languages, based on many sources of data.
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Author: Robyn Speer
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## Installation
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wordfreq requires Python 3 and depends on a few other Python modules
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(msgpack, langcodes, and regex). You can install it and its dependencies
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in the usual way, either by getting it from pip:
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pip3 install wordfreq
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or by getting the repository and running its setup.py:
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python3 setup.py install
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See [Additional CJK installation](#additional-cjk-installation) for extra
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steps that are necessary to get Chinese, Japanese, and Korean word frequencies.
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## Usage
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wordfreq provides access to estimates of the frequency with which a word is
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used, in 36 languages (see *Supported languages* below). It uses many different
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data sources, not just one corpus.
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It provides both 'small' and 'large' wordlists:
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- The 'small' lists take up very little memory and cover words that appear at
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least once per million words.
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- The 'large' lists cover words that appear at least once per 100 million
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words.
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The default list is 'best', which uses 'large' if it's available for the
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language, and 'small' otherwise.
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The most straightforward function for looking up frequencies is:
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word_frequency(word, lang, wordlist='best', minimum=0.0)
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This function looks up a word's frequency in the given language, returning its
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frequency as a decimal between 0 and 1.
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>>> from wordfreq import word_frequency
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>>> word_frequency('cafe', 'en')
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1.23e-05
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>>> word_frequency('café', 'en')
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5.62e-06
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>>> word_frequency('cafe', 'fr')
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1.51e-06
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>>> word_frequency('café', 'fr')
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5.75e-05
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`zipf_frequency` is a variation on `word_frequency` that aims to return the
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word frequency on a human-friendly logarithmic scale. The Zipf scale was
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proposed by Marc Brysbaert, who created the SUBTLEX lists. The Zipf frequency
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of a word is the base-10 logarithm of the number of times it appears per
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billion words. A word with Zipf value 6 appears once per thousand words, for
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example, and a word with Zipf value 3 appears once per million words.
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Reasonable Zipf values are between 0 and 8, but because of the cutoffs
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described above, the minimum Zipf value appearing in these lists is 1.0 for the
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'large' wordlists and 3.0 for 'small'. We use 0 as the default Zipf value
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for words that do not appear in the given wordlist, although it should mean
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one occurrence per billion words.
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>>> from wordfreq import zipf_frequency
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>>> zipf_frequency('the', 'en')
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7.73
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>>> zipf_frequency('word', 'en')
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5.26
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>>> zipf_frequency('frequency', 'en')
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4.36
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>>> zipf_frequency('zipf', 'en')
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1.49
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>>> zipf_frequency('zipf', 'en', wordlist='small')
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0.0
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The parameters to `word_frequency` and `zipf_frequency` are:
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- `word`: a Unicode string containing the word to look up. Ideally the word
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is a single token according to our tokenizer, but if not, there is still
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hope -- see *Tokenization* below.
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- `lang`: the BCP 47 or ISO 639 code of the language to use, such as 'en'.
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- `wordlist`: which set of word frequencies to use. Current options are
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'small', 'large', and 'best'.
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- `minimum`: If the word is not in the list or has a frequency lower than
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`minimum`, return `minimum` instead. You may want to set this to the minimum
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value contained in the wordlist, to avoid a discontinuity where the wordlist
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ends.
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## Frequency bins
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wordfreq's wordlists are designed to load quickly and take up little space in
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the repository. We accomplish this by avoiding meaningless precision and
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packing the words into frequency bins.
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In wordfreq, all words that have the same Zipf frequency rounded to the nearest
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hundredth have the same frequency. We don't store any more precision than that.
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So instead of having to store that the frequency of a word is
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.000011748975549395302, where most of those digits are meaningless, we just store
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the frequency bins and the words they contain.
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Because the Zipf scale is a logarithmic scale, this preserves the same relative
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precision no matter how far down you are in the word list. The frequency of any
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word is precise to within 1%.
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(This is not a claim about _accuracy_, but about _precision_. We believe that
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the way we use multiple data sources and discard outliers makes wordfreq a
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more accurate measurement of the way these words are really used in written
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language, but it's unclear how one would measure this accuracy.)
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## The figure-skating metric
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We combine word frequencies from different sources in a way that's designed
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to minimize the impact of outliers. The method reminds me of the scoring system
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in Olympic figure skating:
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- Find the frequency of each word according to each data source.
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- For each word, drop the sources that give it the highest and lowest frequency.
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- Average the remaining frequencies.
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- Rescale the resulting frequency list to add up to 1.
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## Sources and supported languages
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This data comes from a Luminoso project called [Exquisite Corpus][xc], whose
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goal is to download good, varied, multilingual corpus data, process it
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appropriately, and combine it into unified resources such as wordfreq.
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[xc]: https://github.com/LuminosoInsight/exquisite-corpus
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Exquisite Corpus compiles 8 different domains of text, some of which themselves
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come from multiple sources:
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- **Wikipedia**, representing encyclopedic text
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- **Subtitles**, from OPUS OpenSubtitles 2018 and SUBTLEX
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- **News**, from NewsCrawl 2014 and GlobalVoices
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- **Books**, from Google Books Ngrams 2012
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- **Web** text, from OSCAR
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- **Twitter**, representing short-form social media
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- **Reddit**, representing potentially longer Internet comments
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- **Miscellaneous** word frequencies: in Chinese, we import a free wordlist
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that comes with the Jieba word segmenter, whose provenance we don't really
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know
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The following languages are supported, with reasonable tokenization and at
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least 3 different sources of word frequencies:
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Language Code # Large? WP Subs News Books Web Twit. Redd. Misc.
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──────────────────────────────┼────────────────────────────────────────────────
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Arabic ar 5 Yes │ Yes Yes Yes - Yes Yes - -
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Bangla bn 5 Yes │ Yes Yes Yes - Yes Yes - -
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Bosnian bs [1] 3 - │ Yes Yes - - - Yes - -
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Bulgarian bg 4 - │ Yes Yes - - Yes Yes - -
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Catalan ca 5 Yes │ Yes Yes Yes - Yes Yes - -
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Chinese zh [3] 7 Yes │ Yes Yes Yes Yes Yes Yes - Jieba
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Croatian hr [1] 3 │ Yes Yes - - - Yes - -
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Czech cs 5 Yes │ Yes Yes Yes - Yes Yes - -
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Danish da 4 - │ Yes Yes - - Yes Yes - -
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Dutch nl 5 Yes │ Yes Yes Yes - Yes Yes - -
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English en 7 Yes │ Yes Yes Yes Yes Yes Yes Yes -
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Finnish fi 6 Yes │ Yes Yes Yes - Yes Yes Yes -
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French fr 7 Yes │ Yes Yes Yes Yes Yes Yes Yes -
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German de 7 Yes │ Yes Yes Yes Yes Yes Yes Yes -
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Greek el 4 - │ Yes Yes - - Yes Yes - -
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Hebrew he 5 Yes │ Yes Yes - Yes Yes Yes - -
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Hindi hi 4 Yes │ Yes - - - Yes Yes Yes -
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Hungarian hu 4 - │ Yes Yes - - Yes Yes - -
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Icelandic is 3 - │ Yes Yes - - Yes - - -
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Indonesian id 3 - │ Yes Yes - - - Yes - -
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Italian it 7 Yes │ Yes Yes Yes Yes Yes Yes Yes -
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Japanese ja 5 Yes │ Yes Yes - - Yes Yes Yes -
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Korean ko 4 - │ Yes Yes - - - Yes Yes -
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Latvian lv 4 - │ Yes Yes - - Yes Yes - -
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Lithuanian lt 3 - │ Yes Yes - - Yes - - -
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Macedonian mk 5 Yes │ Yes Yes Yes - Yes Yes - -
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Malay ms 3 - │ Yes Yes - - - Yes - -
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Norwegian nb [2] 5 Yes │ Yes Yes - - Yes Yes Yes -
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Persian fa 4 - │ Yes Yes - - Yes Yes - -
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Polish pl 6 Yes │ Yes Yes Yes - Yes Yes Yes -
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Portuguese pt 5 Yes │ Yes Yes Yes - Yes Yes - -
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Romanian ro 3 - │ Yes Yes - - Yes - - -
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Russian ru 5 Yes │ Yes Yes Yes Yes - Yes - -
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Slovak sl 3 - │ Yes Yes - - Yes - - -
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Slovenian sk 3 - │ Yes Yes - - Yes - - -
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Serbian sr [1] 3 - │ Yes Yes - - - Yes - -
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Spanish es 7 Yes │ Yes Yes Yes Yes Yes Yes Yes -
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Swedish sv 5 Yes │ Yes Yes - - Yes Yes Yes -
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Tagalog fil 3 - │ Yes Yes - - Yes - - -
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Tamil ta 3 - │ Yes - - - Yes Yes - -
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Turkish tr 4 - │ Yes Yes - - Yes Yes - -
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Ukrainian uk 5 Yes │ Yes Yes - - Yes Yes Yes -
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Urdu ur 3 - │ Yes - - - Yes Yes - -
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Vietnamese vi 3 - │ Yes Yes - - Yes - - -
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[1] Bosnian, Croatian, and Serbian use the same underlying word list, because
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they share most of their vocabulary and grammar, they were once considered the
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same language, and language detection cannot distinguish them. This word list
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can also be accessed with the language code `sh`.
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[2] The Norwegian text we have is specifically written in Norwegian Bokmål, so
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we give it the language code 'nb' instead of the vaguer code 'no'. We would use
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'nn' for Nynorsk, but there isn't enough data to include it in wordfreq.
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[3] This data represents text written in both Simplified and Traditional
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Chinese, with primarily Mandarin Chinese vocabulary. See "Multi-script
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languages" below.
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Some languages provide 'large' wordlists, including words with a Zipf frequency
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between 1.0 and 3.0. These are available in 14 languages that are covered by
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enough data sources.
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## Other functions
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`tokenize(text, lang)` splits text in the given language into words, in the same
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way that the words in wordfreq's data were counted in the first place. See
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*Tokenization*.
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`top_n_list(lang, n, wordlist='best')` returns the most common *n* words in
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the list, in descending frequency order.
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>>> from wordfreq import top_n_list
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>>> top_n_list('en', 10)
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['the', 'to', 'and', 'of', 'a', 'in', 'i', 'is', 'for', 'that']
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>>> top_n_list('es', 10)
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['de', 'la', 'que', 'el', 'en', 'y', 'a', 'los', 'no', 'un']
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`iter_wordlist(lang, wordlist='best')` iterates through all the words in a
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wordlist, in descending frequency order.
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`get_frequency_dict(lang, wordlist='best')` returns all the frequencies in
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a wordlist as a dictionary, for cases where you'll want to look up a lot of
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words and don't need the wrapper that `word_frequency` provides.
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`available_languages(wordlist='best')` returns a dictionary whose keys are
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language codes, and whose values are the data file that will be loaded to
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provide the requested wordlist in each language.
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`get_language_info(lang)` returns a dictionary of information about how we
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preprocess text in this language, such as what script we expect it to be
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written in, which characters we normalize together, and how we tokenize it.
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See its docstring for more information.
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`random_words(lang='en', wordlist='best', nwords=5, bits_per_word=12)`
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returns a selection of random words, separated by spaces. `bits_per_word=n`
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will select each random word from 2^n words.
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If you happen to want an easy way to get [a memorable, xkcd-style
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password][xkcd936] with 60 bits of entropy, this function will almost do the
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job. In this case, you should actually run the similar function
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`random_ascii_words`, limiting the selection to words that can be typed in
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ASCII. But maybe you should just use [xkpa][].
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[xkcd936]: https://xkcd.com/936/
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[xkpa]: https://github.com/beala/xkcd-password
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## Tokenization
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wordfreq uses the Python package `regex`, which is a more advanced
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implementation of regular expressions than the standard library, to
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separate text into tokens that can be counted consistently. `regex`
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produces tokens that follow the recommendations in [Unicode
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Annex #29, Text Segmentation][uax29], including the optional rule that
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splits words between apostrophes and vowels.
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There are exceptions where we change the tokenization to work better
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with certain languages:
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- In Arabic and Hebrew, it additionally normalizes ligatures and removes
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combining marks.
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- In Japanese and Korean, instead of using the regex library, it uses the
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external library `mecab-python3`. This is an optional dependency of wordfreq,
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and compiling it requires the `libmecab-dev` system package to be installed.
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- In Chinese, it uses the external Python library `jieba`, another optional
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dependency.
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- While the @ sign is usually considered a symbol and not part of a word,
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wordfreq will allow a word to end with "@" or "@s". This is one way of
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writing gender-neutral words in Spanish and Portuguese.
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[uax29]: http://unicode.org/reports/tr29/
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When wordfreq's frequency lists are built in the first place, the words are
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tokenized according to this function.
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>>> from wordfreq import tokenize
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>>> tokenize('l@s niñ@s', 'es')
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['l@s', 'niñ@s']
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>>> zipf_frequency('l@s', 'es')
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3.03
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Because tokenization in the real world is far from consistent, wordfreq will
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also try to deal gracefully when you query it with texts that actually break
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into multiple tokens:
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>>> zipf_frequency('New York', 'en')
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5.32
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>>> zipf_frequency('北京地铁', 'zh') # "Beijing Subway"
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3.29
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The word frequencies are combined with the half-harmonic-mean function in order
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to provide an estimate of what their combined frequency would be. In Chinese,
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where the word breaks must be inferred from the frequency of the resulting
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words, there is also a penalty to the word frequency for each word break that
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must be inferred.
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This method of combining word frequencies implicitly assumes that you're asking
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about words that frequently appear together. It's not multiplying the
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frequencies, because that would assume they are statistically unrelated. So if
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you give it an uncommon combination of tokens, it will hugely over-estimate
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their frequency:
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>>> zipf_frequency('owl-flavored', 'en')
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3.3
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## Multi-script languages
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Two of the languages we support, Serbian and Chinese, are written in multiple
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scripts. To avoid spurious differences in word frequencies, we automatically
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transliterate the characters in these languages when looking up their words.
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Serbian text written in Cyrillic letters is automatically converted to Latin
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letters, using standard Serbian transliteration, when the requested language is
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`sr` or `sh`. If you request the word list as `hr` (Croatian) or `bs`
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(Bosnian), no transliteration will occur.
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Chinese text is converted internally to a representation we call
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"Oversimplified Chinese", where all Traditional Chinese characters are replaced
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with their Simplified Chinese equivalent, *even if* they would not be written
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that way in context. This representation lets us use a straightforward mapping
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that matches both Traditional and Simplified words, unifying their frequencies
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when appropriate, and does not appear to create clashes between unrelated words.
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Enumerating the Chinese wordlist will produce some unfamiliar words, because
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people don't actually write in Oversimplified Chinese, and because in
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practice Traditional and Simplified Chinese also have different word usage.
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## Similar, overlapping, and varying languages
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As much as we would like to give each language its own distinct code and its
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own distinct word list with distinct source data, there aren't actually sharp
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boundaries between languages.
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Sometimes, it's convenient to pretend that the boundaries between
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languages coincide with national borders, following the maxim that "a language
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is a dialect with an army and a navy" (Max Weinreich). This gets complicated
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when the linguistic situation and the political situation diverge.
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Moreover, some of our data sources rely on language detection, which of course
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has no idea which country the writer of the text belongs to.
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So we've had to make some arbitrary decisions about how to represent the
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fuzzier language boundaries, such as those within Chinese, Malay, and
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Croatian/Bosnian/Serbian. See [Language Log][] for some firsthand reports of
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the mutual intelligibility or unintelligibility of languages.
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[Language Log]: http://languagelog.ldc.upenn.edu/nll/?p=12633
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Smoothing over our arbitrary decisions is the fact that we use the `langcodes`
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module to find the best match for a language code. If you ask for word
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frequencies in `cmn-Hans` (the fully specific language code for Mandarin in
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Simplified Chinese), you will get the `zh` wordlist, for example.
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## Additional CJK installation
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Chinese, Japanese, and Korean have additional external dependencies so that
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they can be tokenized correctly. They can all be installed at once by requesting
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the 'cjk' feature:
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pip install wordfreq[cjk]
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Tokenizing Chinese depends on the `jieba` package, tokenizing Japanese depends
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on `mecab-python3` and `ipadic`, and tokenizing Korean depends on `mecab-python3`
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and `mecab-ko-dic`.
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As of version 2.4.2, you no longer have to install dictionaries separately.
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## License
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`wordfreq` is freely redistributable under the MIT license (see
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`MIT-LICENSE.txt`), and it includes data files that may be
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redistributed under a Creative Commons Attribution-ShareAlike 4.0
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license (https://creativecommons.org/licenses/by-sa/4.0/).
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`wordfreq` contains data extracted from Google Books Ngrams
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(http://books.google.com/ngrams) and Google Books Syntactic Ngrams
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(http://commondatastorage.googleapis.com/books/syntactic-ngrams/index.html).
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The terms of use of this data are:
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Ngram Viewer graphs and data may be freely used for any purpose, although
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acknowledgement of Google Books Ngram Viewer as the source, and inclusion
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of a link to http://books.google.com/ngrams, would be appreciated.
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`wordfreq` also contains data derived from the following Creative Commons-licensed
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sources:
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- The Leeds Internet Corpus, from the University of Leeds Centre for Translation
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Studies (http://corpus.leeds.ac.uk/list.html)
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- Wikipedia, the free encyclopedia (http://www.wikipedia.org)
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- ParaCrawl, a multilingual Web crawl (https://paracrawl.eu)
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It contains data from OPUS OpenSubtitles 2018
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(http://opus.nlpl.eu/OpenSubtitles.php), whose data originates from the
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OpenSubtitles project (http://www.opensubtitles.org/) and may be used with
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attribution to OpenSubtitles.
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It contains data from various SUBTLEX word lists: SUBTLEX-US, SUBTLEX-UK,
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SUBTLEX-CH, SUBTLEX-DE, and SUBTLEX-NL, created by Marc Brysbaert et al.
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(see citations below) and available at
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http://crr.ugent.be/programs-data/subtitle-frequencies.
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I (Robyn Speer) have obtained permission by e-mail from Marc Brysbaert to
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distribute these wordlists in wordfreq, to be used for any purpose, not just
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for academic use, under these conditions:
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- Wordfreq and code derived from it must credit the SUBTLEX authors.
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- It must remain clear that SUBTLEX is freely available data.
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These terms are similar to the Creative Commons Attribution-ShareAlike license.
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Some additional data was collected by a custom application that watches the
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streaming Twitter API, in accordance with Twitter's Developer Agreement &
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Policy. This software gives statistics about words that are commonly used on
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Twitter; it does not display or republish any Twitter content.
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## Citing wordfreq
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If you use wordfreq in your research, please cite it! We publish the code
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through Zenodo so that it can be reliably cited using a DOI. The current
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citation is:
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> Robyn Speer, Joshua Chin, Andrew Lin, Sara Jewett, & Lance Nathan.
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> (2018, October 3). LuminosoInsight/wordfreq: v2.2. Zenodo.
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> https://doi.org/10.5281/zenodo.1443582
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The same citation in BibTex format:
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```
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@misc{robyn_speer_2018_1443582,
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author = {Robyn Speer and
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Joshua Chin and
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Andrew Lin and
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Sara Jewett and
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Lance Nathan},
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title = {LuminosoInsight/wordfreq: v2.2},
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month = oct,
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year = 2018,
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doi = {10.5281/zenodo.1443582},
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url = {https://doi.org/10.5281/zenodo.1443582}
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}
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```
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## Citations to work that wordfreq is built on
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- Bojar, O., Chatterjee, R., Federmann, C., Haddow, B., Huck, M., Hokamp, C.,
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Koehn, P., Logacheva, V., Monz, C., Negri, M., Post, M., Scarton, C.,
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Specia, L., & Turchi, M. (2015). Findings of the 2015 Workshop on Statistical
|
|
Machine Translation.
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http://www.statmt.org/wmt15/results.html
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- Brysbaert, M. & New, B. (2009). Moving beyond Kucera and Francis: A Critical
|
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Evaluation of Current Word Frequency Norms and the Introduction of a New and
|
|
Improved Word Frequency Measure for American English. Behavior Research
|
|
Methods, 41 (4), 977-990.
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http://sites.google.com/site/borisnew/pub/BrysbaertNew2009.pdf
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- Brysbaert, M., Buchmeier, M., Conrad, M., Jacobs, A.M., Bölte, J., & Böhl, A.
|
|
(2011). The word frequency effect: A review of recent developments and
|
|
implications for the choice of frequency estimates in German. Experimental
|
|
Psychology, 58, 412-424.
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- Cai, Q., & Brysbaert, M. (2010). SUBTLEX-CH: Chinese word and character
|
|
frequencies based on film subtitles. PLoS One, 5(6), e10729.
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|
http://journals.plos.org/plosone/article?id=10.1371/journal.pone.0010729
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- Davis, M. (2012). Unicode text segmentation. Unicode Standard Annex, 29.
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http://unicode.org/reports/tr29/
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- Halácsy, P., Kornai, A., Németh, L., Rung, A., Szakadát, I., & Trón, V.
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|
(2004). Creating open language resources for Hungarian. In Proceedings of the
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|
4th international conference on Language Resources and Evaluation (LREC2004).
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http://mokk.bme.hu/resources/webcorpus/
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- Keuleers, E., Brysbaert, M. & New, B. (2010). SUBTLEX-NL: A new frequency
|
|
measure for Dutch words based on film subtitles. Behavior Research Methods,
|
|
42(3), 643-650.
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http://crr.ugent.be/papers/SUBTLEX-NL_BRM.pdf
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|
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- Kudo, T. (2005). Mecab: Yet another part-of-speech and morphological
|
|
analyzer.
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http://mecab.sourceforge.net/
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|
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- Lin, Y., Michel, J.-B., Aiden, E. L., Orwant, J., Brockman, W., and Petrov,
|
|
S. (2012). Syntactic annotations for the Google Books Ngram Corpus.
|
|
Proceedings of the ACL 2012 system demonstrations, 169-174.
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|
http://aclweb.org/anthology/P12-3029
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- Lison, P. and Tiedemann, J. (2016). OpenSubtitles2016: Extracting Large
|
|
Parallel Corpora from Movie and TV Subtitles. In Proceedings of the 10th
|
|
International Conference on Language Resources and Evaluation (LREC 2016).
|
|
http://stp.lingfil.uu.se/~joerg/paper/opensubs2016.pdf
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- Ortiz Suárez, P. J., Sagot, B., and Romary, L. (2019). Asynchronous pipelines
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|
for processing huge corpora on medium to low resource infrastructures. In
|
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Proceedings of the Workshop on Challenges in the Management of Large Corpora
|
|
(CMLC-7) 2019.
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https://oscar-corpus.com/publication/2019/clmc7/asynchronous/
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- ParaCrawl (2018). Provision of Web-Scale Parallel Corpora for Official
|
|
European Languages. https://paracrawl.eu/
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- van Heuven, W. J., Mandera, P., Keuleers, E., & Brysbaert, M. (2014).
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SUBTLEX-UK: A new and improved word frequency database for British English.
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The Quarterly Journal of Experimental Psychology, 67(6), 1176-1190.
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http://www.tandfonline.com/doi/pdf/10.1080/17470218.2013.850521
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