Assessment of Machine Learning Performance for Decision Support in Venture Capital Investments

The venture capital (VC) industry offers opportunities for investment in early-stage companies where uncertainty is very high. Unfortunately, the tools investors currently have available are not robust enough to reduce risk and help them managing uncertainty better. Machine learning data-driven appr...

Full description

Bibliographic Details
Main Authors: Javier Arroyo, Francesco Corea, Guillermo Jimenez-Diaz, Juan A. Recio-Garcia
Format: Article
Language:English
Published: IEEE 2019-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/8821312/
id doaj-30a4ed2b3b9d42669fe7fd092edfd5f8
record_format Article
spelling doaj-30a4ed2b3b9d42669fe7fd092edfd5f82021-03-29T23:17:25ZengIEEEIEEE Access2169-35362019-01-01712423312424310.1109/ACCESS.2019.29386598821312Assessment of Machine Learning Performance for Decision Support in Venture Capital InvestmentsJavier Arroyo0Francesco Corea1Guillermo Jimenez-Diaz2Juan A. Recio-Garcia3https://orcid.org/0000-0001-8731-6195Department of Software Engineering and Artificial Intelligence, Universidad Complutense of Madrid, Madrid, SpainDepartment of Management, Ca’ Foscari University, Venice, ItalyDepartment of Software Engineering and Artificial Intelligence, Universidad Complutense of Madrid, Madrid, SpainDepartment of Software Engineering and Artificial Intelligence, Universidad Complutense of Madrid, Madrid, SpainThe venture capital (VC) industry offers opportunities for investment in early-stage companies where uncertainty is very high. Unfortunately, the tools investors currently have available are not robust enough to reduce risk and help them managing uncertainty better. Machine learning data-driven approaches can bridge this gap, as they already do in the hedge fund industry. These approaches are now possible because data from thousands of companies over the world is available through platforms such as Crunchbase. Previous academic efforts have focused only on predicting two classes of exits, i.e., being acquired by other company or offering shares to the public, using only one or a few subsets of explanatory variables. These events are typically related to high returns, but also higher risk, making hard for a venture fund to get repeatable and sustainable returns. On the contrary, we will try to predict more possible outcomes including a subsequent funding round or the closure of the company using a large set of signals. In this way, our approach would provide VC investors with more information to set up a portfolio with lower risk that may eventually achieve higher returns than those based on finding unicorns (i.e., companies with a valuation higher than one billion dollars). We will analyze the performance of several machine learning methods in a dataset of over 120,000 early-stage companies in a realistic setting that tries to predict their progress in a 3-year time window. Results show that machine learning can support venture investors in their decision-making processes to find opportunities and better assessing the risk of potential investments.https://ieeexplore.ieee.org/document/8821312/Crunchbasedecision support systemsinvestmentmachine learningrisk assessmentventure capital
collection DOAJ
language English
format Article
sources DOAJ
author Javier Arroyo
Francesco Corea
Guillermo Jimenez-Diaz
Juan A. Recio-Garcia
spellingShingle Javier Arroyo
Francesco Corea
Guillermo Jimenez-Diaz
Juan A. Recio-Garcia
Assessment of Machine Learning Performance for Decision Support in Venture Capital Investments
IEEE Access
Crunchbase
decision support systems
investment
machine learning
risk assessment
venture capital
author_facet Javier Arroyo
Francesco Corea
Guillermo Jimenez-Diaz
Juan A. Recio-Garcia
author_sort Javier Arroyo
title Assessment of Machine Learning Performance for Decision Support in Venture Capital Investments
title_short Assessment of Machine Learning Performance for Decision Support in Venture Capital Investments
title_full Assessment of Machine Learning Performance for Decision Support in Venture Capital Investments
title_fullStr Assessment of Machine Learning Performance for Decision Support in Venture Capital Investments
title_full_unstemmed Assessment of Machine Learning Performance for Decision Support in Venture Capital Investments
title_sort assessment of machine learning performance for decision support in venture capital investments
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2019-01-01
description The venture capital (VC) industry offers opportunities for investment in early-stage companies where uncertainty is very high. Unfortunately, the tools investors currently have available are not robust enough to reduce risk and help them managing uncertainty better. Machine learning data-driven approaches can bridge this gap, as they already do in the hedge fund industry. These approaches are now possible because data from thousands of companies over the world is available through platforms such as Crunchbase. Previous academic efforts have focused only on predicting two classes of exits, i.e., being acquired by other company or offering shares to the public, using only one or a few subsets of explanatory variables. These events are typically related to high returns, but also higher risk, making hard for a venture fund to get repeatable and sustainable returns. On the contrary, we will try to predict more possible outcomes including a subsequent funding round or the closure of the company using a large set of signals. In this way, our approach would provide VC investors with more information to set up a portfolio with lower risk that may eventually achieve higher returns than those based on finding unicorns (i.e., companies with a valuation higher than one billion dollars). We will analyze the performance of several machine learning methods in a dataset of over 120,000 early-stage companies in a realistic setting that tries to predict their progress in a 3-year time window. Results show that machine learning can support venture investors in their decision-making processes to find opportunities and better assessing the risk of potential investments.
topic Crunchbase
decision support systems
investment
machine learning
risk assessment
venture capital
url https://ieeexplore.ieee.org/document/8821312/
work_keys_str_mv AT javierarroyo assessmentofmachinelearningperformancefordecisionsupportinventurecapitalinvestments
AT francescocorea assessmentofmachinelearningperformancefordecisionsupportinventurecapitalinvestments
AT guillermojimenezdiaz assessmentofmachinelearningperformancefordecisionsupportinventurecapitalinvestments
AT juanareciogarcia assessmentofmachinelearningperformancefordecisionsupportinventurecapitalinvestments
_version_ 1724189774792622080