Gurcan, FatihBoztas, Gizem DilanDalveren, Gonca Gokce MenekseDerawi, MohammadInformation Systems Engineering2024-07-052024-07-05202382071-105010.3390/su150974962-s2.0-85159265155https://doi.org/10.3390/su15097496https://hdl.handle.net/20.500.14411/2521GURCAN, Fatih/0000-0001-9915-6686; boztaƟ, gizem/0000-0002-4593-032X; Menekse Dalveren, Gonca Gokce/0000-0002-8649-1909; Derawi, Mohammad/0000-0003-0448-7613The purpose of this research is to identify the areas of interest, research topics, and application areas that reflect the research nature of digital transformation (DT), as well as the strategies, practices, and trends of DT. To accomplish this, the Latent Dirichlet allocation algorithm, a probabilistic topic modeling technique, was applied to 5350 peer-reviewed journal articles on DT published in the last ten years, from 2013 to 2022. The analysis resulted in the discovery of 34 topics. These topics were classified, and a systematic taxonomy for DT was presented, including four sub-categories: implementation, technology, process, and human. As a result of time-based trend analysis, "Sustainable Energy", "DT in Health", "E-Government", "DT in Education", and "Supply Chain" emerged as top topics with an increasing trend. Our findings indicate that research interests are focused on specific applications of digital transformation in industrial and public settings. Based on our findings, we anticipate that the next phase of DT research and practice will concentrate on specific DT applications in government, health, education, and economics. "Sustainable Energy" and "Supply Chain" have been identified as the most prominent topics in current DT processes and applications. This study can help researchers and practitioners in the field by providing insights and implications about the evolution and applications of DT. Our findings are intended to serve as a guide for DT in understanding current research gaps and potential future research topics.eninfo:eu-repo/semantics/openAccessdigital transformationtrends and practicestopic modelingretrospective analysisDigital Transformation Strategies, Practices, and Trends: A Large-Scale Retrospective Study Based on Machine LearningArticleQ2Q2159WOS:000987794900001