DOI: 10.1142/s1363919626500210 ISSN: 1363-9196

A TOPIC MODELLING-DRIVEN SYSTEMATIC MAPPING OF GENERATIVE AI AND CREATIVITY RESEARCH: TOWARD A CONCEPTUAL FRAMEWORK

MOHAMMED A. AL-SHARAFI, IBRAHIM A. ELGENDY, MOHAMED Y. I. HELAL, RASHA ALAHMAD, INYOUNG CHAE, YOGESH K. DWIVEDI

Generative artificial intelligence is rapidly reshaping creative work, while research remains fragmented across education, creative industries, and organisational innovation. This study conducts a topic-modelling-driven systematic mapping review of 61 peer-reviewed English-language publications (2023–June 2025). Latent Dirichlet Allocation applied to titles, abstracts, and keywords identifies 20 topics consolidated into five thematic clusters: (1) creative education and pedagogy, (2) human–AI collaboration and authorship, (3) tools, platforms, and intelligent creative systems, (4) industry and cultural applications, and (5) evolving techniques and experimental insights. Cross-cluster synthesis highlights recurring GenAI roles (ideation, co-creation, personalisation, guidance/feedback), key mediators (task constraints, user capabilities, governance/design, and policy conditions), and contingent outcomes spanning fluency, originality, diversity/voice, and agency/integrity. A streamlined GenAI–Creativity Interaction Framework connects domains, roles, mediators, and outcomes to support theory-based empirical testing and responsible system design.

More from our Archive