Datasets:
Tasks:
Other
Modalities:
Text
Sub-tasks:
part-of-speech
Languages:
Polish
Size:
10K - 100K
Tags:
structure-prediction
License:
| annotations_creators: | |
| - expert-generated | |
| language_creators: | |
| - other | |
| language: | |
| - pl | |
| license: | |
| - gpl-3.0 | |
| multilinguality: | |
| - monolingual | |
| size_categories: | |
| - unknown | |
| source_datasets: | |
| - original | |
| task_categories: | |
| - other | |
| task_ids: | |
| - part-of-speech | |
| pretty_name: nkjp-pos | |
| tags: | |
| - structure-prediction | |
| # nkjp-pos | |
| ## Description | |
| NKJP-POS is a part the National Corpus of Polish (*Narodowy Korpus Języka Polskiego*). Its objective is part-of-speech tagging, e.g. nouns, verbs, adjectives, adverbs, etc. During the creation of corpus, texts of were annotated by humans from various sources, covering many domains and genres. | |
| ## Tasks (input, output and metrics) | |
| Part-of-speech tagging (POS tagging) - tagging words in text with their corresponding part of speech. | |
| **Input** ('*tokens'* column): sequence of tokens | |
| **Output** ('*pos_tags'* column): sequence of predicted tokens’ classes (35 possible classes, described in detail in the annotation guidelines) | |
| **Measurements**: F1-score (seqeval) | |
| **Example***:* | |
| Input: `['Zarejestruj', 'się', 'jako', 'bezrobotny', '.']` | |
| Input (translated by DeepL): `Register as unemployed.` | |
| Output: `['impt', 'qub', 'conj', 'subst', 'interp']` | |
| ## Data splits | |
| | Subset | Cardinality (sentences) | | |
| | ----------- | ----------------------: | | |
| | train | 78219 | | |
| | dev | 0 | | |
| | test | 7444 | | |
| ## Class distribution | |
| | Class | train | dev | test | | |
| |:--------|--------:|------:|--------:| | |
| | subst | 0.27345 | - | 0.27656 | | |
| | interp | 0.18101 | - | 0.17944 | | |
| | adj | 0.10611 | - | 0.10919 | | |
| | prep | 0.09567 | - | 0.09547 | | |
| | qub | 0.05670 | - | 0.05491 | | |
| | fin | 0.04939 | - | 0.04648 | | |
| | praet | 0.04409 | - | 0.04348 | | |
| | conj | 0.03711 | - | 0.03724 | | |
| | adv | 0.03512 | - | 0.03333 | | |
| | inf | 0.01591 | - | 0.01547 | | |
| | comp | 0.01476 | - | 0.01439 | | |
| | num | 0.01322 | - | 0.01436 | | |
| | ppron3 | 0.01111 | - | 0.01018 | | |
| | ppas | 0.01086 | - | 0.01085 | | |
| | ger | 0.00961 | - | 0.01050 | | |
| | brev | 0.00856 | - | 0.01181 | | |
| | ppron12 | 0.00670 | - | 0.00665 | | |
| | aglt | 0.00629 | - | 0.00602 | | |
| | pred | 0.00539 | - | 0.00540 | | |
| | pact | 0.00454 | - | 0.00452 | | |
| | bedzie | 0.00229 | - | 0.00243 | | |
| | pcon | 0.00218 | - | 0.00189 | | |
| | impt | 0.00203 | - | 0.00226 | | |
| | siebie | 0.00177 | - | 0.00158 | | |
| | imps | 0.00174 | - | 0.00177 | | |
| | interj | 0.00131 | - | 0.00102 | | |
| | xxx | 0.00070 | - | 0.00048 | | |
| | adjp | 0.00069 | - | 0.00065 | | |
| | winien | 0.00068 | - | 0.00057 | | |
| | adja | 0.00048 | - | 0.00058 | | |
| | pant | 0.00012 | - | 0.00018 | | |
| | burk | 0.00011 | - | 0.00006 | | |
| | numcol | 0.00011 | - | 0.00013 | | |
| | depr | 0.00010 | - | 0.00004 | | |
| | adjc | 0.00007 | - | 0.00008 | | |
| ## Citation | |
| ``` | |
| @book{przepiorkowski_narodowy_2012, | |
| title = {Narodowy korpus języka polskiego}, | |
| isbn = {978-83-01-16700-4}, | |
| language = {pl}, | |
| publisher = {Wydawnictwo Naukowe PWN}, | |
| editor = {Przepiórkowski, Adam and Bańko, Mirosław and Górski, Rafał L. and Lewandowska-Tomaszczyk, Barbara}, | |
| year = {2012} | |
| } | |
| ``` | |
| ## License | |
| ``` | |
| GNU GPL v.3 | |
| ``` | |
| ## Links | |
| [HuggingFace](https://huggingface.co/datasets/clarin-pl/nkjp-pos) | |
| [Source](http://clip.ipipan.waw.pl/NationalCorpusOfPolish) | |
| [Paper](http://nkjp.pl/settings/papers/NKJP_ksiazka.pdf) | |
| ## Examples | |
| ### Loading | |
| ```python | |
| from pprint import pprint | |
| from datasets import load_dataset | |
| dataset = load_dataset("clarin-pl/nkjp-pos") | |
| pprint(dataset['train'][5000]) | |
| # {'id': '130-2-900005_morph_49.49-s', | |
| # 'pos_tags': [16, 4, 3, 30, 12, 18, 3, 16, 14, 6, 14, 26, 1, 30, 12], | |
| # 'tokens': ['Najwyraźniej', | |
| # 'źle', | |
| # 'ocenił', | |
| # 'odległość', | |
| # ',', | |
| # 'bo', | |
| # 'zderzył', | |
| # 'się', | |
| # 'z', | |
| # 'jadącą', | |
| # 'z', | |
| # 'naprzeciwka', | |
| # 'ciężarową', | |
| # 'scanią', | |
| # '.']} | |
| ``` | |
| ### Evaluation | |
| ```python | |
| import random | |
| from pprint import pprint | |
| from datasets import load_dataset, load_metric | |
| dataset = load_dataset("clarin-pl/nkjp-pos") | |
| references = dataset["test"]["pos_tags"] | |
| # generate random predictions | |
| predictions = [ | |
| [ | |
| random.randrange(dataset["train"].features["pos_tags"].feature.num_classes) | |
| for _ in range(len(labels)) | |
| ] | |
| for labels in references | |
| ] | |
| # transform to original names of labels | |
| references_named = [ | |
| [dataset["train"].features["pos_tags"].feature.names[label] for label in labels] | |
| for labels in references | |
| ] | |
| predictions_named = [ | |
| [dataset["train"].features["pos_tags"].feature.names[label] for label in labels] | |
| for labels in predictions | |
| ] | |
| # transform to BILOU scheme | |
| references_named = [ | |
| [f"U-{label}" if label != "O" else label for label in labels] | |
| for labels in references_named | |
| ] | |
| predictions_named = [ | |
| [f"U-{label}" if label != "O" else label for label in labels] | |
| for labels in predictions_named | |
| ] | |
| # utilise seqeval to evaluate | |
| seqeval = load_metric("seqeval") | |
| seqeval_score = seqeval.compute( | |
| predictions=predictions_named, | |
| references=references_named, | |
| scheme="BILOU", | |
| mode="strict", | |
| ) | |
| pprint(seqeval_score, depth=1) | |
| # {'adj': {...}, | |
| # 'adja': {...}, | |
| # 'adjc': {...}, | |
| # 'adjp': {...}, | |
| # 'adv': {...}, | |
| # 'aglt': {...}, | |
| # 'bedzie': {...}, | |
| # 'brev': {...}, | |
| # 'burk': {...}, | |
| # 'comp': {...}, | |
| # 'conj': {...}, | |
| # 'depr': {...}, | |
| # 'fin': {...}, | |
| # 'ger': {...}, | |
| # 'imps': {...}, | |
| # 'impt': {...}, | |
| # 'inf': {...}, | |
| # 'interj': {...}, | |
| # 'interp': {...}, | |
| # 'num': {...}, | |
| # 'numcol': {...}, | |
| # 'overall_accuracy': 0.027855061488566583, | |
| # 'overall_f1': 0.027855061488566583, | |
| # 'overall_precision': 0.027855061488566583, | |
| # 'overall_recall': 0.027855061488566583, | |
| # 'pact': {...}, | |
| # 'pant': {...}, | |
| # 'pcon': {...}, | |
| # 'ppas': {...}, | |
| # 'ppron12': {...}, | |
| # 'ppron3': {...}, | |
| # 'praet': {...}, | |
| # 'pred': {...}, | |
| # 'prep': {...}, | |
| # 'qub': {...}, | |
| # 'siebie': {...}, | |
| # 'subst': {...}, | |
| # 'winien': {...}, | |
| # 'xxx': {...}} | |
| ``` |