%Aigaion2 BibTeX export from Idiap Publications
%Friday 05 December 2025 05:02:59 PM

@INPROCEEDINGS{Inada_ACADEMYOFMANAGEMENTPROCEEDINGS2025._2025,
                      author = {Inada, Takahiro and Villatoro-Tello, Esa{\'{u}} and Park, Jung and Pulcrano, Jim and Leleux, Benoit F.},
                    keywords = {BERTopic, Data Mining, Text Analysis, topic detection},
                    projects = {Idiap},
         mainresearchprogram = {AI for Everyone},
                       month = jun,
                       title = {The Greatest Challenge For Startups: Computational Text Analysis on Swiss Ventures},
                   booktitle = {Academy of Management Proceedings 2025.},
                        year = {2025},
                         url = {https://journals.aom.org/doi/abs/10.5465/AMPROC.2025.17544poster},
                    abstract = {This study showcases the application of a computational text analytics approach to explore the distinct challenges faced by entrepreneurs across various industries. By analyzing data from 1,351 startup competition applications in Switzerland, the research provides a repeatable and scalable method for understanding sector-specific entrepreneurial obstacles. The analysis reveals sectoral differences, highlighting distinct challenges in areas such as platform, energy/cleantech, artificial intelligence, and medical industries. Sales and marketing challenges are particularly pronounced in the medical sector, which also underscores the critical role of pre-entry experience in understanding customer needs. These challenges differ notably from those in sectors with similar regulatory and product life cycle demands. The study offers actionable insights for business managers and policymakers, advocating for tailored strategies to address the unique needs of entrepreneurs in different industries.}
}