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RUREBUS-2020 SHARED TASK: RUSSIAN RELATION EXTRACTION FOR BUSINESS

ABBYY, Vitaly Ivanin, Ekaterina Artemova, Tatiana Batura, Vladimir Ivanov, Veronika Sarkisyan, Elena Tutubalina, Ivan Smurov, ABBYY

2020Kompʹûternaâ lingvistika i intellektualʹnye tehnologii23 citationsDOIOpen Access PDF

Abstract

In this paper, we present a shared task on core information extraction problems, named entity recognition and relation extraction. In contrast to popular shared tasks on related problems, we try to move away from strictly academic rigor and rather model a business case. As a source for textual data we choose the corpus of Russian strategic documents, which we annotated according to our own annotation scheme. To speed up the annotation process, we exploit various active learning techniques. In total we ended up with more than two hundred annotated documents. Thus we managed to create a high-quality data set in short time. The shared task consisted of three tracks, devoted to 1) named entity recognition, 2) relation extraction and 3) joint named entity recognition and relation extraction. We provided with the annotated texts as well as a set of unannotated texts, which could of been used in any way to improve solutions. In the paper we overview and compare solutions, submitted by the shared task participants. We release both raw and annotated corpora along with annotation guidelines, evaluation scripts and results at https://github.com/dialogue-evaluation/RuREBus.

Topics & Concepts

Computer scienceAnnotationNamed-entity recognitionScripting languageTask (project management)Relationship extractionRelation (database)Set (abstract data type)Information retrievalNatural language processingInformation extractionProcess (computing)Artificial intelligenceExploitDatabaseProgramming languageEconomicsManagementComputer securityOperating systemTopic ModelingNatural Language Processing TechniquesSentiment Analysis and Opinion Mining
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