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--- |
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language: |
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- ru |
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multilinguality: |
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- monolingual |
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task_categories: |
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- token-classification |
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task_ids: |
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- named-entity-recognition |
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pretty_name: NEREL |
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--- |
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# NEREL dataset |
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## Table of Contents |
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- [Dataset Description](#dataset-description) |
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- [Dataset Structure](#dataset-structure) |
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- [Citation Information](#citation-information) |
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- [Contacts](#contacts) |
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## Dataset Description |
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NEREL dataset (https://doi.org/10.48550/arXiv.2108.13112) is |
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a Russian dataset for named entity recognition and relation extraction. |
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NEREL is significantly larger than existing Russian datasets: |
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to date it contains 56K annotated named entities and 39K annotated relations. |
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Its important difference from previous datasets is annotation of nested named |
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entities, as well as relations within nested entities and at the discourse |
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level. NEREL can facilitate development of novel models that can extract |
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relations between nested named entities, as well as relations on both sentence |
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and document levels. NEREL also contains the annotation of events involving |
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named entities and their roles in the events. |
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You can see full entity types list in a subset "ent_types" |
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and full list of relation types in a subset "rel_types". |
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## Dataset Structure |
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There are three "configs" or "subsets" of the dataset. |
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Using |
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`load_dataset('MalakhovIlya/NEREL', 'ent_types')['ent_types']` |
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you can download list of entity types ( |
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Dataset({features: ['type', 'link']}) |
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) where "link" is a knowledge base name used in entity linking task. |
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Using |
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`load_dataset('MalakhovIlya/NEREL', 'rel_types')['rel_types']` |
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you can download list of entity types ( |
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Dataset({features: ['type', 'arg1', 'arg2']}) |
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) where "arg1" and "arg2" are lists of entity types that can take part in such |
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"type" of relation. \<ENTITY> stands for any type. |
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Using |
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`load_dataset('MalakhovIlya/NEREL', 'data')` or `load_dataset('MalakhovIlya/NEREL')` |
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you can download the data itself, |
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DatasetDict with 3 splits: "train", "test" and "dev". |
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Each of them contains text document with annotated entities, relations and |
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links. |
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"entities" are used in named-entity recognition task (see https://en.wikipedia.org/wiki/Named-entity_recognition). |
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"relations" are used in relationship extraction task (see https://en.wikipedia.org/wiki/Relationship_extraction). |
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"links" are used in entity linking task (see https://en.wikipedia.org/wiki/Entity_linking) |
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Each entity is represented by a string of the following format: |
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`"<id>\t<type> <start> <stop>\t<text>"`, where |
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`<id>` is an entity id, |
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`<type>` is one of entity types, |
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`<start>` is a position of the first symbol of entity in text, |
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`<stop>` is the last symbol position in text +1. |
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Each relation is represented by a string of the following format: |
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`"<id>\t<type> Arg1:<arg1_id> Arg2:<arg2_id>"`, where |
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`<id>` is a relation id, |
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`<arg1_id>` and `<arg2_id>` are entity ids. |
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Each link is represented by a string of the following format: |
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`"<id>\tReference <ent_id> <link>\t<text>"`, where |
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`<id>` is a link id, |
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`<ent_id>` is an entity id, |
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`<link>` is a reference to knowledge base entity (example: "Wikidata:Q1879675" if link exists, else "Wikidata:NULL"), |
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`<text>` is a name of entity in knowledge base if link exists, else empty string. |
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## Citation Information |
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@article{loukachevitch2021nerel, |
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title={NEREL: A Russian Dataset with Nested Named Entities, Relations and Events}, |
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author={Loukachevitch, Natalia and Artemova, Ekaterina and Batura, Tatiana and Braslavski, Pavel and Denisov, Ilia and Ivanov, Vladimir and Manandhar, Suresh and Pugachev, Alexander and Tutubalina, Elena}, |
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journal={arXiv preprint arXiv:2108.13112}, |
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year={2021} |
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} |
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## Contacts |
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Malakhov Ilya |
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Telegram - https://t.me/noname_4710 |
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