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Solving the Data Sparsity Problem in Predicting the Success of the Startups with Machine Learning Methods

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  • Dafei Yin
  • Jing Li
  • Gaosheng Wu

Abstract

Predicting the success of startup companies is of great importance for both startup companies and investors. It is difficult due to the lack of available data and appropriate general methods. With data platforms like Crunchbase aggregating the information of startup companies, it is possible to predict with machine learning algorithms. Existing research suffers from the data sparsity problem as most early-stage startup companies do not have much data available to the public. We try to leverage the recent algorithms to solve this problem. We investigate several machine learning algorithms with a large dataset from Crunchbase. The results suggest that LightGBM and XGBoost perform best and achieve 53.03% and 52.96% F1 scores. We interpret the predictions from the perspective of feature contribution. We construct portfolios based on the models and achieve high success rates. These findings have substantial implications on how machine learning methods can help startup companies and investors.

Suggested Citation

  • Dafei Yin & Jing Li & Gaosheng Wu, 2021. "Solving the Data Sparsity Problem in Predicting the Success of the Startups with Machine Learning Methods," Papers 2112.07985, arXiv.org.
  • Handle: RePEc:arx:papers:2112.07985
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    References listed on IDEAS

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    1. Jenkins, Anna S. & Wiklund, Johan & Brundin, Ethel, 2014. "Individual responses to firm failure: Appraisals, grief, and the influence of prior failure experience," Journal of Business Venturing, Elsevier, vol. 29(1), pages 17-33.
    2. Kaiser, Ulrich & Kuhn, Johan M., 2020. "The value of publicly available, textual and non-textual information for startup performance prediction," Journal of Business Venturing Insights, Elsevier, vol. 14(C).
    3. Mckenzie,David J. & Sansone,Dario & Mckenzie,David J. & Sansone,Dario, 2017. "Man vs. machine in predicting successful entrepreneurs : evidence from a business plan competition in Nigeria," Policy Research Working Paper Series 8271, The World Bank.
    4. Kaloyan Haralampiev & Boyan Yankov & Petko Ruskov, 2014. "Models and Tools for Technology Start-Up Companies Success Analysis," Economic Alternatives, University of National and World Economy, Sofia, Bulgaria, issue 3, pages 15-24, October.
    5. Nahata, Rajarishi, 2008. "Venture capital reputation and investment performance," Journal of Financial Economics, Elsevier, vol. 90(2), pages 127-151, November.
    6. Clarysse, Bart & Tartari, Valentina & Salter, Ammon, 2011. "The impact of entrepreneurial capacity, experience and organizational support on academic entrepreneurship," Research Policy, Elsevier, vol. 40(8), pages 1084-1093, October.
    7. Chandler, Gaylen N. & Hanks, Steven H., 1993. "Measuring the performance of emerging businesses: A validation study," Journal of Business Venturing, Elsevier, vol. 8(5), pages 391-408, September.
    8. Srinivasan Ragothaman & Bijayananda Naik & Kumoli Ramakrishnan, 2003. "Predicting Corporate Acquisitions: An Application of Uncertain Reasoning Using Rule Induction," Information Systems Frontiers, Springer, vol. 5(4), pages 401-412, December.
    9. Nanda, Ramana & Samila, Sampsa & Sorenson, Olav, 2020. "The persistent effect of initial success: Evidence from venture capital," Journal of Financial Economics, Elsevier, vol. 137(1), pages 231-248.
    10. Kaiser, Ulrich & Kuhn, Johan Moritz, 2020. "Value of Publicly Available, Textual and Non-textuThe al Information for Startup Performance Prediction," IZA Discussion Papers 13029, Institute of Labor Economics (IZA).
    11. Charles E. Eesley & David H. Hsu & Edward B. Roberts, 2014. "The contingent effects of top management teams on venture performance: Aligning founding team composition with innovation strategy and commercialization environment," Strategic Management Journal, Wiley Blackwell, vol. 35(12), pages 1798-1817, December.
    12. P. Holmes & A. Hunt & I. Stone, 2010. "An analysis of new firm survival using a hazard function," Applied Economics, Taylor & Francis Journals, vol. 42(2), pages 185-195.
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    Cited by:

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    2. Lele Cao & Gustaf Halvardsson & Andrew McCornack & Vilhelm von Ehrenheim & Pawel Herman, 2023. "Sourcing Investment Targets for Venture and Growth Capital Using Multivariate Time Series Transformer," Papers 2309.16888, arXiv.org.

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