Morphological parser (POS, lemmata, NER etc.)
Project description
MorDL: Morphological Parser (POS, lemmata, NER etc.)
MorDL is a tool to organize a pipeline for complete morphological sentence parsing (POS-tagging, lemmatization, morphological feature tagging) and Named-entity recognition.
Scores (accuracy) on SynTagRus: UPOS: 99.16%
; FEATS: 98.29%
(tokens),
98.88%
(tags); LEMMA: 99.46%
(sic!). In all experiments we used seed=42
.
Some other seed
values may help to achive better results. Models'
hyperparameters are also allowed to tune.
The validation with the official evaluation script of CoNLL 2018 Shared Task:
- For inference on the SynTagRus test corpus, when predicted fields were emptied and all other fields were stayed intact, the scores are the same as outlined above.
- Serial inference with UPOS - FEATS - LEMMA taggers resulted with scores:
UPOS:
99.16%
; UFeats:97.76%
; AllTags:98.58
; Lemmas:98.66%
.
For completeness, we included that script in our distribution, so you can use
it for your model evaluation, too. To simplify it, we also made a wrapper
mordl.conll18_ud_eval
for it.
Installation
pip
MorDL supports Python 3.5 or later. To install via pip, run:
$ pip install mordl
If you currently have a previous version of MorDL installed, run:
$ pip install mordl -U
From Source
Alternatively, you can install MorDL from the source of this git repository:
$ git clone https://github.com/fostroll/mordl.git
$ cd mordl
$ pip install -e .
This gives you access to examples that are not included in the PyPI package.
Usage
Our taggers use separate models, so they can be used independently. But to achieve best results FEATS tagger uses UPOS tags during training. And LEMMA and NER taggers use both UPOS and FEATS tags. Thus, for a fully untagged corpus, the tagging pipeline is serially applying the taggers, like shown below (assuming that our goal is NER and we already have trained taggers of all types):
from mordl import UposTagger, FeatsTagger, NeTagger
tagger_u, tagger_f, tagger_n = UposTagger(), FeatsTagger(), NeTagger()
tagger_u.load('upos_model')
tagger_f.load('feats_model')
tagger_n.load('misc-ne_model')
tagger_n.predict(
tagger_f.predict(
tagger_u.predict('untagged.conllu')
), save_to='result.conllu'
)
Any tagger in our pipeline may be replaced with a better one if you have it. The weakness of separate taggers is that they take more space. If all models were created with BERT embeddings, and you load them in memory simultaneously, they may eat up to 9Gb on GPU. Or even more, if you use them as a part of a multiprocess server (for example, as a part of Flask application). In that case, during loading you have to use params device and dataset_device to distribute your models on various GPUs. Alternatively, if you need just to tag some corpus once, you may load models serially:
tagger = UposTagger()
tagger.load('upos_model')
tagger.predict('untagged.conllu', save_to='result_upos.conllu')
del tagger # just for sure
tagger = FeatsTagger()
tagger.load('feats_model')
tagger.predict('result_upos.conllu', save_to='result_feats.conllu')
del tagger
tagger = NeTagger()
tagger_n.load('misc-ne_model')
tagger.predict('result_feats.conllu', save_to='result.conllu')
del tagger
Don't use identical names for input and output file names when you call the
.predict()
methods. Normally, there will be no problem, because the methods
by default load all input file in memory before tagging. But if the input file
is large, you may want to use split parameter for that the methods handle
the file by parts. In that case, saving of the first part of the tagging data
occurs before loading next. So, identical names will entail data loss.
Training process is also simple. If you have training corpora and you don't want any experiments, just run:
from mordl import UposTagger
tagger = UposTagger()
tagger.load_train_corpus(train_corpus)
tagger.load_test_corpus(dev_corpus)
stat = tagger.train('upos_model', device='cuda:0', word_emb_tune_params={})
It is training pipeline for the UPOS tagger; pipelines for other taggers are
identical. If you want to train the model again without re-training word
embeddings anew to possibly achieve better results, set the
word_emb_tune_params to None
.
For a more complete understanding of MorDL toolkit usage, refer to the
Python notebook with pipeline examples in the examples
directory of the
MorDL GitHub repository. Also, the detailed descriptions are available
in the docs:
This project was developed with a focus on Russian language, but a few nuances we used are unlikely to worsen the quality of processing other languages.
MorDL's supports CoNLL-U (if input/output is a file), or Parsed CoNLL-U (if input/output is an object). Also, MorDL's allows Corpuscula's corpora wrappers as input.
License
MorDL is released under the BSD License. See the LICENSE file for more details.
Project details
Release history Release notifications | RSS feed
Download files
Download the file for your platform. If you're not sure which to choose, learn more about installing packages.