--- language: - ru multilinguality: - monolingual task_categories: - token-classification task_ids: - named-entity-recognition pretty_name: RuNNE --- # RuNNE dataset ## Table of Contents - [Dataset Description](#dataset-description) - [Dataset Structure](#dataset-structure) - [Citation Information](#citation-information) - [Contacts](#contacts) ## Dataset Description Part of NEREL dataset (https://arxiv.org/abs/2108.13112), a Russian dataset for named entity recognition and relation extraction, used in RuNNE (2022) competition (https://github.com/dialogue-evaluation/RuNNE). Entities may be nested (see https://arxiv.org/abs/2108.13112). Entity types list: * AGE * AWARD * CITY * COUNTRY * CRIME * DATE * DISEASE * DISTRICT * EVENT * FACILITY * FAMILY * IDEOLOGY * LANGUAGE * LAW * LOCATION * MONEY * NATIONALITY * NUMBER * ORDINAL * ORGANIZATION * PENALTY * PERCENT * PERSON * PRODUCT * PROFESSION * RELIGION * STATE_OR_PROVINCE * TIME * WORK_OF_ART ## Dataset Structure There are two "configs" or "subsets" of the dataset. Using `load_dataset('MalakhovIlya/RuNNE', 'ent_types')['ent_types']` you can download list of entity types ( Dataset({ features: ['type'], num_rows: 29 }) ) Using `load_dataset('MalakhovIlya/RuNNE', 'data')` or `load_dataset('MalakhovIlya/RuNNE')` you can download the data itself (DatasetDict) Dataset consists of 3 splits: "train", "test" and "dev". Each of them contains text document. "Train" and "test" splits also contain annotated entities, "dev" doesn't. Each entity is represented by a string of the following format: "\ \ \", where \ is a position of the first symbol of entity in text, \ is the last symbol position in text and \ is a one of the aforementioned list of types. P.S. Original NEREL dataset also contains relations, events and linked entities, but they were not added here yet ¯\\\_(ツ)_/¯ ## Citation Information @article{Artemova2022runne, title={{RuNNE-2022 Shared Task: Recognizing Nested Named Entities}}, author={Artemova, Ekaterina and Zmeev, Maksim and Loukachevitch, Natalia and Rozhkov, Igor and Batura, Tatiana and Braslavski, Pavel and Ivanov, Vladimir and Tutubalina, Elena}, journal={Computational Linguistics and Intellectual Technologies: Proceedings of the International Conference "Dialog"}, year={2022} }