Decoding start-up success: predicting future through founder profiles - a statistical analysis
DOI :
https://doi.org/10.5269/bspm.80527Résumé
Startups stimulate economic growth, innovation, and job creation, but they need on outside funding to be viable. Based on the literature, founder traits such as social capital, human capital, and entrepreneurial experience influence investment performance nevertheless, empirical research is inconsistent and context dependent. Using Data Labs, LinkedIn, and Crunchbase data on 300 Indian start-ups, this analysis quantifies the association between founder traits and success rates. We use multi-linear and logistic regression models to evaluate how past entrepreneurial experience, education, industry exposure, and connectivity affect fundraising success. We also show how expertise and education boost fundraising possibilities, especially in urban areas and fintech, where investors favor innovation scalability above revenue creation. The findings provide practical advice for entrepreneurs, accelerators, and lawmakers who want to make start-up investments easier, and they also illustrate that variables at the founder level are predictive of success rates.
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