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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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 |
work_keys_str_mv |
AT francescocorea hackingtheventureindustryanearlystagestartupsinvestmentframeworkfordatadriveninvestors AT giorgiobertinetti hackingtheventureindustryanearlystagestartupsinvestmentframeworkfordatadriveninvestors AT enricomariacervellati hackingtheventureindustryanearlystagestartupsinvestmentframeworkfordatadriveninvestors |
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