Decoding Sustainable Entrepreneurship Current Research and Future Direction Through Application of Machine Learning-Based Structured Topic Modeling on Intellectual Corpus

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info:eu-repo/semantics/openAccess

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This study leverages structured topic modeling (STM) to decode the expansive intellectual corpus on sustainable entrepreneurship, utilizing a dataset of 363 peer-reviewed articles from Scopus over a decade. Focused on “sustainable entrepre-neurship” and related terms, the STM method integrated document-specific meta-data to enhance the analysis of thematic developments. The findings revealed ten distinct topics, such as innovation in firm performance, sustainability in business models, and the role of education in sustainable intentions, highlighting the inter-play between these themes and their evolution. This research identifies key thematic areas and examines the influence of source titles and publication years on topic prevalence, indicating shifts in academic focus and identifying emerging trends. The study’s implications suggest integrating sustainability into core business and edu-cational strategies, enhancing the understanding of sustainable entrepreneurship’s dynamic nature, and providing a foundation for future scholarly and practical efforts.

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Sustainable entrepreneurship, Machine learning, Structure topic modeling, Future

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Abbas, M. H., Bullut, M., & Ali, H.. (2025). Decoding sustainable entrepreneurship current research and future direction through application of machine learning-based structured topic modeling on intellectual corpus. Journal of International Entrepreneurship. https://doi.org/10.1007/s10843-025-00387-8

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