--- language: ru multilinguality: monolingual task_ids: - named-entity-recognition --- ### About DataSet The dataset based on NEREL corpus. For more information about original data, please visit this [source](https://github.com/dialogue-evaluation/RuNNE) Example of preparing original data illustrated in ### Additional info The dataset consist 29 entities, each of them can be as beginner part of entity "B-" as inner "I-". Frequency for each entity: - I-AGE: 284 - B-AGE: 247 - B-AWARD: 285 - I-AWARD: 466 - B-CITY: 1080 - I-CITY: 39 - B-COUNTRY: 2378 - I-COUNTRY: 128 - B-CRIME: 214 - I-CRIME: 372 - B-DATE: 2701 - I-DATE: 5437 - B-DISEASE: 136 - I-DISEASE: 80 - B-DISTRICT: 98 - I-DISTRICT: 73 - B-EVENT: 3369 - I-EVENT: 2524 - B-FACILITY: 376 - I-FACILITY: 510 - B-FAMILY: 27 - I-FAMILY: 22 - B-IDEOLOGY: 271 - I-IDEOLOGY: 20 - B-LANGUAGE: 32 - I-LAW: 1196 - B-LAW: 297 - B-LOCATION: 242 - I-LOCATION: 139 - B-MONEY: 147 - I-MONEY: 361 - B-NATIONALITY: 437 - I-NATIONALITY: 41 - B-NUMBER: 1079 - I-NUMBER: 328 - B-ORDINAL: 485 - I-ORDINAL: 6 - B-ORGANIZATION: 3339 - I-ORGANIZATION: 3354 - B-PENALTY: 73 - I-PENALTY: 104 - B-PERCENT: 51 - I-PERCENT: 37 - B-PERSON: 5148 - I-PERSON: 3635 - I-PRODUCT: 48 - B-PRODUCT: 197 - B-PROFESSION: 3869 - I-PROFESSION: 2598 - B-RELIGION: 102 - I-RELIGION: 1 - B-STATE_OR_PROVINCE: 436 - I-STATE_OR_PROVINCE: 154 - B-TIME: 187 - I-TIME: 529 - B-WORK_OF_ART: 133 - I-WORK_OF_ART: 194 You can find mapper for entity ids in file: ```python import pickle with open('id_to_label_map.pickle', 'rb') as f: mapper = pickle.load(f) ```