Publication | Open Access
Two-stage topic modelling of scientific publications: A case study of University of Nairobi, Kenya
34
Citations
37
References
2021
Year
EngineeringUnsupervised Statistical AnalysisBibliometricsCorpus LinguisticsJournalismText MiningNatural Language ProcessingInformation RetrievalData ScienceData MiningDocument ClassificationBiostatisticsCitation AnalysisBiomedical Text MiningContent AnalysisStatisticsAbstract AnalysisDocument ClusteringUnstructured DataText Mining DomainsTwo-stage Topic ModellingScientific PublicationsKnowledge DiscoveryTopic ModelCase StudyScholarly CommunicationArts
Unsupervised statistical analysis of unstructured data has gained wide acceptance especially in natural language processing and text mining domains. Topic modelling with Latent Dirichlet Allocation is one such statistical tool that has been successfully applied to synthesize collections of legal, biomedical documents and journalistic topics. We applied a novel two-stage topic modelling approach and illustrated the methodology with data from a collection of published abstracts from the University of Nairobi, Kenya. In the first stage, topic modelling with Latent Dirichlet Allocation was applied to derive the per-document topic probabilities. To more succinctly present the topics, in the second stage, hierarchical clustering with Hellinger distance was applied to derive the final clusters of topics. The analysis showed that dominant research themes in the university include: HIV and malaria research, research on agricultural and veterinary services as well as cross-cutting themes in humanities and social sciences. Further, the use of hierarchical clustering in the second stage reduces the discovered latent topics to clusters of homogeneous topics.
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