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[journal article]

dc.contributor.authorSmirnova, Ninade
dc.contributor.authorMayr, Philippde
dc.date.accessioned2023-11-16T14:35:13Z
dc.date.available2023-11-16T14:35:13Z
dc.date.issued2023de
dc.identifier.issn1588-2861de
dc.identifier.urihttps://www.ssoar.info/ssoar/handle/document/90573
dc.description.abstractAcknowledgments in scientific papers may give an insight into aspects of the scientific community, such as reward systems, collaboration patterns, and hidden research trends. The aim of the paper is to evaluate the performance of different embedding models for the task of automatic extraction and classification of acknowledged entities from the acknowledgment text in scientific papers. We trained and implemented a named entity recognition (NER) task using the flair NLP framework. The training was conducted using three default Flair NER models with four differently-sized corpora and different versions of the flair NLP framework. The Flair Embeddings model trained on the medium corpus with the latest FLAIR version showed the best accuracy of 0.79. Expanding the size of a training corpus from very small to medium size massively increased the accuracy of all training algorithms, but further expansion of the training corpus did not bring further improvement. Moreover, the performance of the model slightly deteriorated. Our model is able to recognize six entity types: funding agency, grant number, individuals, university, corporation, and miscellaneous. The model works more precisely for some entity types than for others; thus, individuals and grant numbers showed a very good F1-Score over 0.9. Most of the previous works on acknowledgment analysis were limited by the manual evaluation of data and therefore by the amount of processed data. This model can be applied for the comprehensive analysis of acknowledgment texts and may potentially make a great contribution to the field of automated acknowledgment analysis.de
dc.description.abstractDanksagungen in wissenschaftlichen Arbeiten können einen Einblick in Aspekte der wissenschaftlichen Gemeinschaft geben, wie z.B. Belohnungssysteme, Kooperationsmuster und versteckte Forschungstrends. Das Ziel dieser Arbeit ist es, die Leistung verschiedener Einbettungsmodelle für die Aufgabe der automatischen Extraktion und Klassifizierung von anerkannten Entitäten aus dem Danksagungstext in wissenschaftlichen Arbeiten zu bewerten.de
dc.languageende
dc.subject.ddcPublizistische Medien, Journalismus,Verlagswesende
dc.subject.ddcNews media, journalism, publishingen
dc.subject.otherNatural language processing; Named entity recognition; Web of science; Acknowledgement; Text mining; Flair NLP-frameworkde
dc.titleEmbedding models for supervised automatic extraction and classification of named entities in scientific acknowledgementsde
dc.description.reviewbegutachtet (peer reviewed)de
dc.description.reviewpeer revieweden
dc.source.journalScientometrics
dc.publisher.countryNLDde
dc.subject.classozSzientometrie, Bibliometrie, Informetriede
dc.subject.classozScientometrics, Bibliometrics, Informetricsen
dc.identifier.urnurn:nbn:de:0168-ssoar-90573-3
dc.rights.licenceCreative Commons - Namensnennung 4.0de
dc.rights.licenceCreative Commons - Attribution 4.0en
ssoar.contributor.institutionGESISde
internal.statusformal und inhaltlich fertig erschlossende
dc.type.stockarticlede
dc.type.documentZeitschriftenartikelde
dc.type.documentjournal articleen
internal.identifier.classoz1080503
internal.identifier.journal763
internal.identifier.document32
internal.identifier.ddc070
dc.identifier.doihttps://doi.org/10.1007/s11192-023-04806-2de
dc.description.pubstatusVeröffentlichungsversionde
dc.description.pubstatusPublished Versionen
internal.identifier.licence16
internal.identifier.pubstatus1
internal.identifier.review1
ssoar.wgl.collectiontruede
internal.pdf.validtrue
internal.pdf.wellformedtrue
internal.pdf.encryptedfalse


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