Hacking the venture industry: An Early-stage Startups Investment framework for data-driven investors

Investing in early-stage companies is incredibly hard, especially when no data are available to support the decision process. Venture capitalists often rely on gut feeling or heuristics to reach a decision, which is biased and potentially harmful. This work proposes a new data-driven framework to he...

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Main Authors: Francesco Corea, Giorgio Bertinetti, Enrico Maria Cervellati
Format: Article
Language:English
Published: Elsevier 2021-09-01
Series:Machine Learning with Applications
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2666827021000311
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spelling doaj-04d87494cd6a440497b6f0389e3a0be32021-08-20T04:37:09ZengElsevierMachine Learning with Applications2666-82702021-09-015100062Hacking the venture industry: An Early-stage Startups Investment framework for data-driven investorsFrancesco Corea0Giorgio Bertinetti1Enrico Maria Cervellati2Department of Management - Ca’ Foscari University of Venice, Fondamenta San Giobbe 873 Cannaregio, 30121 Venice, Italy; Corresponding author.Department of Management - Ca’ Foscari University of Venice, Fondamenta San Giobbe 873 Cannaregio, 30121 Venice, ItalyDepartment of Research - Link Campus University, Via del Casale di S. Pio V, 44, 00165 Rome, ItalyInvesting in early-stage companies is incredibly hard, especially when no data are available to support the decision process. Venture capitalists often rely on gut feeling or heuristics to reach a decision, which is biased and potentially harmful. This work proposes a new data-driven framework to help investors be more effective in selecting companies with a higher probability of success. We built upon existing interdisciplinary research and augmented it with further analysis on more than 600,000 companies over a 20-year timeframe. The resulting framework is therefore a smart checklist of 21 relevant features that may help investors to select the companies more likely to succeed.http://www.sciencedirect.com/science/article/pii/S2666827021000311Venture capitalMachine learningBusiness angelsArtificial intelligenceGradient Tree Boosting
collection DOAJ
language English
format Article
sources DOAJ
author Francesco Corea
Giorgio Bertinetti
Enrico Maria Cervellati
spellingShingle Francesco Corea
Giorgio Bertinetti
Enrico Maria Cervellati
Hacking the venture industry: An Early-stage Startups Investment framework for data-driven investors
Machine Learning with Applications
Venture capital
Machine learning
Business angels
Artificial intelligence
Gradient Tree Boosting
author_facet Francesco Corea
Giorgio Bertinetti
Enrico Maria Cervellati
author_sort Francesco Corea
title Hacking the venture industry: An Early-stage Startups Investment framework for data-driven investors
title_short Hacking the venture industry: An Early-stage Startups Investment framework for data-driven investors
title_full Hacking the venture industry: An Early-stage Startups Investment framework for data-driven investors
title_fullStr Hacking the venture industry: An Early-stage Startups Investment framework for data-driven investors
title_full_unstemmed Hacking the venture industry: An Early-stage Startups Investment framework for data-driven investors
title_sort hacking the venture industry: an early-stage startups investment framework for data-driven investors
publisher Elsevier
series Machine Learning with Applications
issn 2666-8270
publishDate 2021-09-01
description Investing in early-stage companies is incredibly hard, especially when no data are available to support the decision process. Venture capitalists often rely on gut feeling or heuristics to reach a decision, which is biased and potentially harmful. This work proposes a new data-driven framework to help investors be more effective in selecting companies with a higher probability of success. We built upon existing interdisciplinary research and augmented it with further analysis on more than 600,000 companies over a 20-year timeframe. The resulting framework is therefore a smart checklist of 21 relevant features that may help investors to select the companies more likely to succeed.
topic Venture capital
Machine learning
Business angels
Artificial intelligence
Gradient Tree Boosting
url http://www.sciencedirect.com/science/article/pii/S2666827021000311
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