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Predicting the Startup Valuation: A deep learning approach

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  • Monika Dhochak
  • Sudesh Pahal
  • Prince Doliya

Abstract

The investment and funding decisions of a new venture are based on the startup valuation, which remains an inconclusive and disputable subject matter. For this purpose, well-established strategic management theories such as resource-based view (RBV), industrial structure effect, and network-based theory have been leveraged as inputs. This study uses 757 Indian startup deals dataset during the period from January 2012 to December 2019 to develop a predictive model based on the Artificial Neural Network (ANN) technique, which is a deep learning approach to predict the startup valuation. The ANN-based model predicts the startup pre-money valuation, and we also compares the ANN model to a linear classifier, linear regression, in this study. The result shows that the application of the ANN model can be used as a supplementary method to predict the pre-money valuation, if not an alternative to the traditional valuation models depending on its adaptability and accuracy. This model provides a competitive advantage by building a strong foundation during the negotiation between VCs and entrepreneurs. This study provides managerial and theoretical implications to VCs, entrepreneurs, and policy-makers for upgrading the startup ecosystem.

Suggested Citation

  • Monika Dhochak & Sudesh Pahal & Prince Doliya, 2024. "Predicting the Startup Valuation: A deep learning approach," Venture Capital, Taylor & Francis Journals, vol. 26(1), pages 75-99, January.
  • Handle: RePEc:taf:veecee:v:26:y:2024:i:1:p:75-99
    DOI: 10.1080/13691066.2022.2161968
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