PEREZ CAMPDESUÑER, REYNER FRANCISCOREYNER FRANCISCOPEREZ CAMPDESUÑERSANCHEZ RODRIGUEZ, ALEXANDERALEXANDERSANCHEZ RODRIGUEZMARTÍNEZ VIVAR, RODOBALDORODOBALDOMARTÍNEZ VIVARMargarita De Miguel-GuzmánGARCIA VIDAL, GELMARGELMARGARCIA VIDAL2025-10-132025-10-132025-09-0510.3390/publications13030042The volume of scientific publications has increased exponentially over the past decades across virtually all academic disciplines. In this landscape of information overload, objective criteria are needed to identify high-impact research. Citation counts have traditionally served as a primary indicator of scientific relevance; however, questions remain as to whether they truly reflect the intrinsic quality of a publication. This study investigates the relationship between citation frequency and a wide range of editorial, authorship, and contextual variables. A dataset of 339,609 articles indexed in Scopus was analyzed, retrieved using the search query TITLE-ABS-KEY (management) AND LIMIT-TO (subarea, “Busi”). The research employed a descriptive analysis followed by two predictive modeling approaches: a Random Forest algorithm to assess variable importance, and a binary logistic regression to estimate the probability of a paper being cited. Results indicate that factors such as journal quartile, country of affiliation, number of authors, open access availability, and keyword usage significantly influence citation outcomes. The Random Forest model explained 94.9% of the variance, while the logistic model achieved an AUC of 0.669, allowing the formulation of a predictive citation equation. Findings suggest that multiple determinants beyond content quality drive citation behavior, and that citation probability can be predicted with reasonable accuracy, though inherent model limitations must be acknowledged.enbibliometric studiesbusiness and management researchcitationsrandom forest modelsBeyond Quality: Predicting Citation Impact in Business Research Using Data Sciencejournal-article