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Adapted Stanford NLP Python Library with improvements for specific languages.

Project description

A CLASSLA Fork of Stanza for Processing Slovene, Croatian, Serbian and Bulgarian

Description

This pipeline allows for processing of standard Slovene, Croatian, Serbian and Bulgarian on the levels of

  • tokenization and sentence splitting
  • part-of-speech tagging
  • lemmatization
  • dependency parsing
  • named entity recognition

It allso allows for processing of non-standard (Internet) Slovene, Croatian and Serbian on the same levels as standard language (all models are tailored to non-standard language except for dependency parsing where the standard module is used).

Installation

pip

We recommend that you install CLASSLA via pip, the Python package manager. To install, run:

pip install classla

This will also resolve all dependencies.

Running CLASSLA

Getting started

To run the CLASSLA pipeline for the first time on processing standard Slovene, follow these steps:

>>> import classla
>>> classla.download('sl')                            # download standard models for Slovene, use hr for Croatian, sr for Serbian, bg for Bulgarian
>>> nlp = classla.Pipeline('sl')                      # initialize the default Slovene pipeline, use hr for Croatian, sr for Serbian, bg for Bulgarian
>>> doc = nlp("France Prešeren je rojen v Vrbi.")     # run the pipeline
>>> print(doc.conll_file.conll_as_string())           # print the output in CoNLL-U format
# newpar id = 1
# sent_id = 1.1
# text = France Prešeren je rojen v Vrbi.
1	France	France	PROPN	Npmsn	Case=Nom|Gender=Masc|Number=Sing	4	nsubj	_	NER=B-per
2	Prešeren	Prešeren	PROPN	Npmsn	Case=Nom|Gender=Masc|Number=Sing	1	flat_name	_	NER=I-per
3	je	biti	AUX	Va-r3s-n	Mood=Ind|Number=Sing|Person=3|Polarity=Pos|Tense=Pres|VerbForm=Fin	4	cop	_	NER=O
4	rojen	rojen	ADJ	Appmsnn	Case=Nom|Definite=Ind|Degree=Pos|Gender=Masc|Number=Sing|VerbForm=Part	0	root	_	NER=O
5	v	v	ADP	Sl	Case=Loc	6	case	_	NER=O
6	Vrbi	Vrba	PROPN	Npfsl	Case=Loc|Gender=Fem|Number=Sing	4	obl	_	NER=B-loc|SpaceAfter=No
7	.	.	PUNCT	Z	_	4	punct	_	NER=O

You can find examples of standard language processing for Croatian, Serbian and Bulgarian at the end of this document.

Processing non-standard language

Processing non-standard Slovene differs to the above standard example just by an additional argument type="nonstandard":

>>> import classla
>>> classla.download('sl', type='nonstandard')        # download non-standard models for Slovene, use hr for $
>>> nlp = classla.Pipeline('sl', type='nonstandard')  # initialize the default non-standard Slovene pipeline,$
>>> doc = nlp("kva smo mi zurali zadnje leto v zagrebu...")     # run the pipeline
>>> print(doc.conll_file.conll_as_string()) 
1	kva	kaj	PRON	Pq-nsa	Case=Acc|Gender=Neut|Number=Sing|PronType=Int	4	obj	_	NER=O
2	smo	biti	AUX	Va-r1p-n	Mood=Ind|Number=Plur|Person=1|Polarity=Pos|Tense=Pres|VerbForm=Fin	4	aux	_	NER=O
3	mi	jaz	PRON	Pp1mpn	Case=Nom|Gender=Masc|Number=Plur|Person=1|PronType=Prs	nsubj	_	NER=O
4	zurali	žurati	VERB	Vmpp-pm	Aspect=Imp|Gender=Masc|Number=Plur|VerbForm=Part	root	_	NER=O
5	zadnje	zadnji	ADJ	Agpnsa	Case=Acc|Degree=Pos|Gender=Neut|Number=Sing	6	amod	_	NER=O
6	leto	leto	NOUN	Ncnsa	Case=Acc|Gender=Neut|Number=Sing	4	obl	NER=O
7	v	v	ADP	Sl	Case=Loc	8	case	_	NER=O
8	zagrebu	Zagreb	PROPN	Npmsl	Case=Loc|Gender=Masc|Number=Sing	4	obl	NER=B-LOC|SpaceAfter=No
9	...	.	PUNCT	Z	_	4	punct	_	NER=O

You can find examples of non-standard language processing for Croatian and Serbian at the end of this document.

For additional usage examples you can also consult the pipeline_demo.py file.

Processors

The CLASSLA pipeline is built from multiple units. These units are called processors. By default CLASSLA runs the tokenize, ner, pos, lemma and depparse processors.

You can specify which processors `CLASSLA should run, via the processors attribute as in the following example, performing tokenization, named entity recognition, part-of-speech tagging and lemmatization.

>>> nlp = classla.Pipeline('sl', processors='tokenize,ner,pos,lemma')

Another popular option might be to perform tokenization, part-of-speech tagging, lemmatization and dependency parsing.

>>> nlp = classla.Pipeline('sl', processors='tokenize,pos,lemma,depparse')

Tokenization and sentence splitting

The tokenization and sentence splitting processor tokenize is the first processor and is required for any further processing.

In case you already have tokenized text, you should separate tokens via spaces and pass the attribute tokenize_pretokenized=True.

By default CLASSLA uses a rule-based tokenizer - reldi-tokeniser.

Part-of-speech tagging

The POS tagging processor pos will general output that contains morphosyntactic description following the MULTEXT-East standard and universal part-of-speech tags and universal features following the Universal Dependencies standard. This processing requires the usage of the tokenize processor.

Lemmatization

The lemmatization processor lemma will produce lemmas (basic forms) for each token in the input. It requires the usage of both the tokenize and pos processors.

Dependency parsing

The dependency parsing processor depparse performs syntactic dependency parsing of sentences following the Universal Dependencies formalism. It requires the tokenize and pos processors.

Named entity recognition

The named entity recognition processor ner identifies named entities in text following the IOB2 format. It requires only the tokenize processor.

Croatian examples

Example of standard Croatian

>>> import classla
>>> nlp = classla.Pipeline('hr') # run classla.download('hr') beforehand if necessary
>>> doc = nlp("Ante Starčević rođen je u Velikom Žitniku.")
>>> print(doc.conll_file.conll_as_string())
# newpar id = 1
# sent_id = 1.1
# text = Ante Starčević rođen je u Velikom Žitniku.
1	Ante	Ante	PROPN	Npmsn	Case=Nom|Gender=Masc|Number=Sing	3	nsubj_pass	_	NER=B-PER
2	Starčević	Starčević	PROPN	Npmsn	Case=Nom|Gender=Masc|Number=Sing	flat	_	NER=I-PER
3	rođen	roditi	ADJ	Appmsnn	Case=Nom|Definite=Ind|Degree=Pos|Gender=Masc|Number=Sing|VerbForm=Part|Voice=Pass	0	root	_	NER=O
4	je	biti	AUX	Var3s	Mood=Ind|Number=Sing|Person=3|Tense=Pres|VerbForm=Fin	aux_pass	_	NER=O
5	u	u	ADP	Sl	Case=Loc	7	case	_	NER=O
6	Velikom	velik	ADJ	Agpmsly	Case=Loc|Definite=Def|Degree=Pos|Gender=Masc|Number=Singamod	_	NER=B-LOC
7	Žitniku	Žitnik	PROPN	Npmsl	Case=Loc|Gender=Masc|Number=Sing	3	obl	NER=I-LOC|SpaceAfter=No
8	.	.	PUNCT	Z	_	3	punct	_	NER=O

Example of non-standard Croatian

>>> import classla
>>> nlp = classla.Pipeline('hr', type='nonstandard') # run classla.download('hr', type='nonstandard') beforehand if necessary
>>> doc = nlp("kaj sam ja tulumaril jucer u ljubljani...")
>>> print(doc.conll_file.conll_as_string())
1	kaj	što	PRON	Pi3n-a	Case=Acc|Gender=Neut|PronType=Int,Rel	4	obj	NER=O
2	sam	biti	AUX	Var1s	Mood=Ind|Number=Sing|Person=1|Tense=Pres|VerbForm=Fin	aux	_	NER=O
3	ja	ja	PRON	Pp1-sn	Case=Nom|Number=Sing|Person=1|PronType=Prs	4	nsubj	_	NER=O
4	tulumaril	tulumariti	VERB	Vmp-sm	Gender=Masc|Number=Sing|Tense=Past|VerbForm=Part|Voice=Act	0	root	_	NER=O
5	jucer	jučer	ADV	Rgp	Degree=Pos	4	advmod	_	NER=O
6	u	u	ADP	Sl	Case=Loc	7	case	_	NER=O
7	ljubljani	Ljubljana	PROPN	Npfsl	Case=Loc|Gender=Fem|Number=Sing	4	obl	_	NER=B-LOC|SpaceAfter=No
8	...	.	PUNCT	Z	_	4	punct	_	NER=O

Serbian examples

Example of standard Serbian

>>> import classla
>>> nlp = classla.Pipeline('sr') # run classla.download('sr') beforehand if necessary
>>> doc = nlp("Slobodan Jovanović rođen je u Novom Sadu.")
>>> print(doc.conll_file.conll_as_string())
# newpar id = 1
# sent_id = 1.1
# text = Slobodan Jovanović rođen je u Novom Sadu.
1	Slobodan	Slobodan	PROPN	Npmsn	Case=Nom|Gender=Masc|Number=Sing	nsubj	_	NER=B-PER
2	Jovanović	Jovanović	PROPN	Npmsn	Case=Nom|Gender=Masc|Number=Sing	flat	_	NER=I-PER
3	rođen	roditi	ADJ	Appmsnn	Case=Nom|Definite=Ind|Degree=Pos|Gender=Masc|Number=Sing|VerbForm=Part|Voice=Pass	0	root	_	NER=O
4	je	biti	AUX	Var3s	Mood=Ind|Number=Sing|Person=3|Tense=Pres|VerbForm=Fin	aux	_	NER=O
5	u	u	ADP	Sl	Case=Loc	6	case	_	NER=O
6	Novom	nov	ADJ	Agpmsly	Case=Loc|Definite=Def|Degree=Pos|Gender=Masc|Number=Singobl	_	NER=B-LOC
7	Sadu	Sad	PROPN	Npmsl	Case=Loc|Gender=Masc|Number=Sing	6	flat	NER=I-LOC|SpaceAfter=No
8	.	.	PUNCT	Z	_	3	punct	_	NER=O

Example of non-standard Serbian

>>> import classla
>>> nlp = classla.Pipeline('sr', type='nonstandard') # run classla.download('sr', type='nonstandard') beforehand if necessary
>>> doc = nlp("ne mogu da verujem kakvo je zezanje bilo prosle godine u zagrebu...")
>>> print(doc.conll_file.conll_as_string())
# newpar id = 1
# sent_id = 1.1
# text = ne mogu da verujem kakvo je zezanje bilo prosle godine u zagrebu...
1	ne	ne	PART	Qz	Polarity=Neg	2	advmod	_	NER=O
2	mogu	moći	VERB	Vmr1s	Mood=Ind|Number=Sing|Person=1|Tense=Pres|VerbForm=Fin	root	_	NER=O
3	da	da	SCONJ	Cs	_	4	mark	_	NER=O
4	verujem	verovati	VERB	Vmr1s	Mood=Ind|Number=Sing|Person=1|Tense=Pres|VerbForm=Fin	2	xcomp	_	NER=O
5	kakvo	kakav	DET	Pi-nsn	Case=Nom|Gender=Neut|Number=Sing|PronType=Int,Rel	ccomp	_	NER=O
6	je	biti	AUX	Var3s	Mood=Ind|Number=Sing|Person=3|Tense=Pres|VerbForm=Fin	aux	_	NER=O
7	zezanje	zezanje	NOUN	Ncnsn	Case=Nom|Gender=Neut|Number=Sing	5	nsubj	NER=O
8	bilo	biti	AUX	Vap-sn	Gender=Neut|Number=Sing|Tense=Past|VerbForm=Part|Voice=Act	5	cop	_	NER=O
9	prosle	prošli	ADJ	Agpfsgy	Case=Gen|Definite=Def|Degree=Pos|Gender=Fem|Number=Sing	10	amod	_	NER=O
10	godine	godina	NOUN	Ncfsg	Case=Gen|Gender=Fem|Number=Sing	8	obl	_	NER=O
11	u	u	ADP	Sl	Case=Loc	12	case	_	NER=O
12	zagrebu	Zagreb	PROPN	Npmsl	Case=Loc|Gender=Masc|Number=Sing	8	obl	NER=B-LOC|SpaceAfter=No
13	...	.	PUNCT	Z	_	2	punct	_	NER=O

Bulgarian examples

Example of standard Bulgarian

>>> import classla
>>> nlp = classla.Pipeline('bg') # run classla.download('bg') beforehand if necessary
>>> doc = nlp("Алеко Константинов е роден в Свищов.")
>>> print(doc.conll_file.conll_as_string())
# newpar id = 1
# sent_id = 1.1
# text = Алеко Константинов е роден в Свищов.
1	Алеко	алеко	PROPN	Npmsi	Definite=Ind|Gender=Masc|Number=Sing	4	nsubj:pass	_	NER=B-PER
2	Константинов	константинов	PROPN	Hmsi	Definite=Ind|Gender=Masc|Number=Sing	flat	_	NER=I-PER
3	е	съм	AUX	Vxitf-r3s	Aspect=Imp|Mood=Ind|Number=Sing|Person=3|Tense=Pres|VerbForm=Fin|Voice=Act	4	aux:pass	_	NER=O
4	роден	родя-(се)	VERB	Vpptcv--smi	Aspect=Perf|Definite=Ind|Gender=Masc|Number=Sing|VerbForm=Part|Voice=Pass	0	root	_	NER=O
5	в	в	ADP	R	_	6	case	_	NER=O
6	Свищов	свищов	PROPN	Npmsi	Definite=Ind|Gender=Masc|Number=Sing	4	iobj	NER=B-LOC|SpaceAfter=No
7	.	.	PUNCT	punct	_	4	punct	_	NER=O

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