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A simple multilingual lemmatizer for Python.

Project description

Python package License Python versions Code Coverage

Purpose

Lemmatization is the process of grouping together the inflected forms of a word so they can be analysed as a single item, identified by the word’s lemma, or dictionary form. Unlike stemming, lemmatization outputs word units that are still valid linguistic forms.

In modern natural language processing (NLP), this task is often indirectly tackled by more complex systems encompassing a whole processing pipeline. However, it appears that there is no straightforward way to address lemmatization in Python although this task is useful in information retrieval and natural language processing.

Simplemma provides a simple and multilingual approach to look for base forms or lemmata. It may not be as powerful as full-fledged solutions but it is generic, easy to install and straightforward to use. In particular, it doesn’t need morphosyntactic information and can process a raw series of tokens or even a text with its built-in (simple) tokenizer. By design it should be reasonably fast and work in a large majority of cases, without being perfect.

With its comparatively small footprint it is especially useful when speed and simplicity matter, in low-resource contexts, for educational purposes, or as a baseline system for lemmatization and morphological analysis.

Currently, 38 languages are partly or fully supported (see table below).

Installation

The current library is written in pure Python with no dependencies:

pip install simplemma

  • pip3 where applicable

  • pip install -U simplemma for updates

Usage

Word-by-word

Simplemma is used by selecting a language of interest and then applying the data on a list of words.

>>> import simplemma
# get a word
myword = 'masks'
# decide which language data to load
>>> langdata = simplemma.load_data('en')
# apply it on a word form
>>> simplemma.lemmatize(myword, langdata)
'mask'
# grab a list of tokens
>>> mytokens = ['Hier', 'sind', 'Vaccines']
>>> langdata = simplemma.load_data('de')
>>> for token in mytokens:
>>>     simplemma.lemmatize(token, langdata)
'hier'
'sein'
'Vaccines'
# list comprehensions can be faster
>>> [simplemma.lemmatize(t, langdata) for t in mytokens]
['hier', 'sein', 'Vaccines']

Chaining several languages can improve coverage:

>>> langdata = simplemma.load_data('de', 'en')
>>> simplemma.lemmatize('Vaccines', langdata)
'vaccine'
>>> langdata = simplemma.load_data('it')
>>> simplemma.lemmatize('spaghettis', langdata)
'spaghettis'
>>> langdata = simplemma.load_data('it', 'fr')
>>> simplemma.lemmatize('spaghettis', langdata)
'spaghetti'
>>> simplemma.lemmatize('spaghetti', langdata)
'spaghetto'

There are cases in which a greedier decomposition and lemmatization algorithm is better. It is deactivated by default:

# same example as before, comes to this result in one step
>>> simplemma.lemmatize('spaghettis', mydata, greedy=True)
'spaghetto'
# a German case
>>> langdata = simplemma.load_data('de')
>>> simplemma.lemmatize('angekündigten', langdata)
'ankündigen' # infinitive verb
>>> simplemma.lemmatize('angekündigten', langdata, greedy=False)
'angekündigt' # past participle

Tokenization

A simple tokenization function is included for convenience:

>>> from simplemma import simple_tokenizer
>>> simple_tokenizer('Lorem ipsum dolor sit amet, consectetur adipiscing elit, sed do eiusmod tempor incididunt ut labore et dolore magna aliqua.')
['Lorem', 'ipsum', 'dolor', 'sit', 'amet', ',', 'consectetur', 'adipiscing', 'elit', ',', 'sed', 'do', 'eiusmod', 'tempor', 'incididunt', 'ut', 'labore', 'et', 'dolore', 'magna', 'aliqua', '.']

The function text_lemmatizer() chains tokenization and lemmatization. It can take greedy (affecting lemmatization) and silent (affecting errors and logging) as arguments:

>>> from simplemma import text_lemmatizer
>>> langdata = simplemma.load_data('pt')
>>> text_lemmatizer('Sou o intervalo entre o que desejo ser e os outros me fizeram.', langdata)
# caveat: desejo is also a noun, should be desejar here
['ser', 'o', 'intervalo', 'entre', 'o', 'que', 'desejo', 'ser', 'e', 'o', 'outro', 'me', 'fazer', '.']

Caveats

# don't expect too much though
>>> langdata = simplemma.load_data('it')
# this diminutive form isn't in the model data
>>> simplemma.lemmatize('spaghettini', langdata)
'spaghettini' # should read 'spaghettino'
# the algorithm cannot choose between valid alternatives yet
>>> langdata = simplemma.load_data('es')
>>> simplemma.lemmatize('son', langdata)
'son' # valid common name, but what about the verb form?

As the focus lies on overall coverage, some short frequent words (typically: pronouns and conjunctions) may need post-processing, this generally concerns a few dozens of tokens per language.

Additionally, the current absence of morphosyntactic information is both an advantage in terms of simplicity and an impassable frontier with respect to lemmatization accuracy, e.g. to disambiguate between past participles and adjectives derived from verbs in Germanic and Romance languages. In most cases, simplemma often doesn’t change the input then.

The greedy algorithm rarely produces forms that are not valid. It is designed to work best in the low-frequency range, notably for compound words and neologisms. Aggressive decomposition is only useful as a general approach in the case of morphologically-rich languages. It can also act as a linguistically motivated stemmer.

Bug reports over the issues page are welcome.

Supported languages

The following languages are available using their ISO 639-1 code:

Available languages (2022-04-06)

Code

Language

Words (10³)

Acc.

Comments

bg

Bulgarian

213

ca

Catalan

579

cs

Czech

187

0.88

on UD CS-PDT

cy

Welsh

360

da

Danish

554

0.92

on UD DA-DDT, alternative: lemmy

de

German

682

0.95

on UD DE-GSD, see also German-NLP list

el

Greek

183

0.88

on UD EL-GDT

en

English

136

0.94

on UD EN-GUM, alternative: LemmInflect

es

Spanish

720

0.94

on UD ES-GSD

et

Estonian

133

low coverage

fa

Persian

10

low coverage, potential issues

fi

Finnish

2,106

alternatives: voikko or NLP list

fr

French

217

0.94

on UD FR-GSD

ga

Irish

383

gd

Gaelic

48

gl

Galician

384

gv

Manx

62

hu

Hungarian

458

hy

Armenian

323

id

Indonesian

17

0.91

on UD ID-CSUI

it

Italian

333

0.93

on UD IT-ISDT

ka

Georgian

65

la

Latin

850

lb

Luxembourgish

305

lt

Lithuanian

247

lv

Latvian

168

mk

Macedonian

57

nb

Norwegian (Bokmål)

617

nl

Dutch

254

0.91

on UD-NL-Alpino

pl

Polish

3,733

0.91

on UD-PL-PDB

pt

Portuguese

933

0.92

on UD-PT-GSD

ro

Romanian

311

ru

Russian

607

alternative: pymorphy2

sk

Slovak

846

0.92

on UD SK-SNK

sl

Slovenian

97

low coverage

sv

Swedish

658

alternative: lemmy

tr

Turkish

1,333

0.88

on UD-TR-Boun

uk

Ukrainian

190

alternative: pymorphy2

Low coverage mentions means one would probably be better off with a language-specific library, but simplemma will work to a limited extent. Open-source alternatives for Python are referenced if possible.

The scores are calculated on Universal Dependencies treebanks on single word tokens (including some contractions but not merged prepositions), they describe to what extent simplemma can accurately map tokens to their lemma form. They can be reproduced using the script udscore.py in the tests/ folder.

This library is particularly relevant as regards the lemmatization of less frequent words. Its performance in this case is only incidentally captured by the benchmark above.

Roadmap

  • [-] Add further lemmatization lists

  • [ ] Grammatical categories as option

  • [ ] Function as a meta-package?

  • [ ] Integrate optional, more complex models?

Credits

Software under MIT license, for the linguistic information databases see licenses folder.

The surface lookups (non-greedy mode) use lemmatization lists taken from various sources:

This rule-based approach based on flexion and lemmatizations dictionaries is to this day an approach used in popular libraries such as spacy.

Contributions

Feel free to contribute, notably by filing issues for feedback, bug reports, or links to further lemmatization lists, rules and tests.

You can also contribute to this lemmatization list repository.

Other solutions

See lists: German-NLP and other awesome-NLP lists.

For a more complex and universal approach in Python see universal-lemmatizer.

References

https://zenodo.org/badge/330707034.svg

Barbaresi A. (2021). Simplemma: a simple multilingual lemmatizer for Python. Zenodo. http://doi.org/10.5281/zenodo.4673264

This work draws from lexical analysis algorithms used in:

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