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Entity Recognition and Relation Extraction from Scientific and Technical Texts in Russian

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arxiv 2011.09817 v3 pith:VVPQTO25 submitted 2020-11-19 cs.CL

Entity Recognition and Relation Extraction from Scientific and Technical Texts in Russian

classification cs.CL
keywords scientificextractioninformationrussianmethodsrelationtextsavailable
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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This paper is devoted to the study of methods for information extraction (entity recognition and relation classification) from scientific texts on information technology. Scientific publications provide valuable information into cutting-edge scientific advances, but efficient processing of increasing amounts of data is a time-consuming task. In this paper, several modifications of methods for the Russian language are proposed. It also includes the results of experiments comparing a keyword extraction method, vocabulary method, and some methods based on neural networks. Text collections for these tasks exist for the English language and are actively used by the scientific community, but at present, such datasets in Russian are not publicly available. In this paper, we present a corpus of scientific texts in Russian, RuSERRC. This dataset consists of 1600 unlabeled documents and 80 labeled with entities and semantic relations (6 relation types were considered). The dataset and models are available at https://github.com/iis-research-team. We hope they can be useful for research purposes and development of information extraction systems.

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