NEREL:一个带有嵌套命名实体、关系和事件的俄语数据集

Natalia V. Loukachevitch, E. Artemova, Tatiana Batura, Pavel Braslavski, Ilia Denisov, V. Ivanov, S. Manandhar, Alexander Pugachev, E. Tutubalina
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引用次数: 14

摘要

在本文中,我们提出了NEREL,一个用于命名实体识别和关系提取的俄语数据集。NEREL比现有的俄语数据集大得多:到目前为止,它包含56K个带注释的命名实体和39K个带注释的关系。它与以前的数据集的重要区别是对嵌套命名实体的注释,以及嵌套实体内部和话语级别的关系。NEREL可以促进新模型的开发,这些模型可以提取嵌套命名实体之间的关系,以及句子和文档级别上的关系。NEREL还包含涉及命名实体及其在事件中的角色的事件注释。NEREL系列可通过https://github.com/nerel-ds/NEREL获得。
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NEREL: A Russian Dataset with Nested Named Entities, Relations and Events
In this paper, we present NEREL, a Russian dataset for named entity recognition and relation extraction. NEREL is significantly larger than existing Russian datasets: to date it contains 56K annotated named entities and 39K annotated relations. Its important difference from previous datasets is annotation of nested named entities, as well as relations within nested entities and at the discourse level. NEREL can facilitate development of novel models that can extract relations between nested named entities, as well as relations on both sentence and document levels. NEREL also contains the annotation of events involving named entities and their roles in the events. The NEREL collection is available via https://github.com/nerel-ds/NEREL.
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