Preprint. Citation patterns of local and non-local African publications: A comparative analysis of five measures of local research
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Abstract
Local research has gained increasing attention in recent years, with a growing body of literature emphasizing its significance—particularly for peripheral communities underrepresented in mainstream scientific discourse. However, despite this growing interest, there remains no clear consensus on how to define local research. Conceptual clarity is essential for enabling consistent and replicable analyses that can capture the specific characteristics, contexts, and societal relevance of local research. This issue is especially pertinent in the Global South, where structural inequalities in visibility and recognition often marginalize regionally focused scholarship. The problem is particularly acute in the African context, where a substantial share of research is published in local or regional journals that are poorly represented in global indexing databases. As bibliometric analyses typically rely on these databases, this exclusion diminishes their perceived relevance. To address this gap, the present study incorporates data from regional and open-access sources to examine citation patterns associated with African local research. It uses multiple conceptualizations of local research to classify publications as either local or non-local depending on the definition used. These classifications are correlated with three citation-based indicators: average citations per publication, time to first citation, and the proportion of uncited publications. Additionally, the study explores the characteristics of citing publications, distinguishing between local and non-local sources as well as domestic and international citations. The findings reveal that citation patterns differ significantly across locality definitions, underscoring the importance of adopting nuanced, context-sensitive approaches to assess and support local research.
Preprint
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