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BiodivNERE: Gold standard corpora for named entity recognition and relation extraction in the biodiversity domain

Nora Abdelmageed, Felicitas Löffler, Leila Feddoul, Alsayed Algergawy, Sheeba Samuel, Jitendra Gaikwad, Anahita J.N. Kazem, Birgitta König‐Ries

2022Biodiversity Data Journal23 citationsDOIOpen Access PDF

Abstract

Background: Biodiversity is the assortment of life on earth covering evolutionary, ecological, biological, and social forms. To preserve life in all its variety and richness, it is imperative to monitor the current state of biodiversity and its change over time and to understand the forces driving it. This need has resulted in numerous works being published in this field. With this, a large amount of textual data (publications) and metadata (e.g. dataset description) has been generated. To support the management and analysis of these data, two techniques from computer science are of interest, namely Named Entity Recognition (NER) and Relation Extraction (RE). While the former enables better content discovery and understanding, the latter fosters the analysis by detecting connections between entities and, thus, allows us to draw conclusions and answer relevant domain-specific questions. To automatically predict entities and their relations, machine/deep learning techniques could be used. The training and evaluation of those techniques require labelled corpora. New information: In this paper, we present two gold-standard corpora for Named Entity Recognition (NER) and Relation Extraction (RE) generated from biodiversity datasets metadata and abstracts that can be used as evaluation benchmarks for the development of new computer-supported tools that require machine learning or deep learning techniques. These corpora are manually labelled and verified by biodiversity experts. In addition, we explain the detailed steps of constructing these datasets. Moreover, we demonstrate the underlying ontology for the classes and relations used to annotate such corpora.

Topics & Concepts

MetadataComputer scienceDomain (mathematical analysis)OntologyRelation (database)Relationship extractionField (mathematics)Artificial intelligenceNamed-entity recognitionInformation retrievalOntology learningNatural language processingKnowledge extractionInformation extractionData scienceDomain knowledgeMachine learningWorld Wide WebData miningUpper ontologyTask (project management)Mathematical analysisManagementSuggested Upper Merged OntologyPure mathematicsPhilosophyMathematicsEpistemologyEconomicsTopic ModelingBiomedical Text Mining and OntologiesNatural Language Processing Techniques
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