Startup Investment Decision Support: Application of Venture Capital Scorecards Using Machine Learning Approaches

This research aims to explore which kinds of metrics are more valuable in making investment decisions for a venture capital firm using machine learning methods. We measure the fit of developed companies to a venture capital firm’s investment thesis with a balanced scorecard based on quantitative and...

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Main Authors: Sarah Bai, Yijun Zhao
Format: Article
Language:English
Published: MDPI AG 2021-07-01
Series:Systems
Subjects:
Online Access:https://www.mdpi.com/2079-8954/9/3/55
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spelling doaj-17fbb27567884f75a9d781398f1b5d142021-09-26T01:31:59ZengMDPI AGSystems2079-89542021-07-019555510.3390/systems9030055Startup Investment Decision Support: Application of Venture Capital Scorecards Using Machine Learning ApproachesSarah Bai0Yijun Zhao1Gabelli School of Business, Fordham University, New York, NY 10023, USADepartment of Computer and Information Sciences, Fordham University, New York, NY 10023, USAThis research aims to explore which kinds of metrics are more valuable in making investment decisions for a venture capital firm using machine learning methods. We measure the fit of developed companies to a venture capital firm’s investment thesis with a balanced scorecard based on quantitative and qualitative characteristics of the companies. Collaborating with the management team of Rose Street Capital (RSC), we explore the most influential factors of their balanced scorecard using their retrospective investment decisions of successful and failed startup companies. Our study employs six standard machine learning models and their counterparts with an additional feature selection technique. Our findings suggest that “planning strategy” and “team management” are the two most determinant factors in the firm’s investment decisions, implying that qualitative factors could be more important to startup evaluation. Furthermore, we analyzed which machine learning models were most accurate in predicting the firm’s investment decisions. Our experimental results demonstrate that the best machine learning models achieve an overall accuracy of 78% in making the correct investment decisions, with an average of 87% and 69% in predicting the decision of companies the firm would and would not have invested in, respectively. Our study provides convincing evidence that qualitative criteria could be more influential in investment decisions and machine learning models can be adapted to help provide which values may be more important to consider for a venture capital firm.https://www.mdpi.com/2079-8954/9/3/55machine learningventure capitalstartupsinvestment decision supportpredictabilityrisk factor analysis
collection DOAJ
language English
format Article
sources DOAJ
author Sarah Bai
Yijun Zhao
spellingShingle Sarah Bai
Yijun Zhao
Startup Investment Decision Support: Application of Venture Capital Scorecards Using Machine Learning Approaches
Systems
machine learning
venture capital
startups
investment decision support
predictability
risk factor analysis
author_facet Sarah Bai
Yijun Zhao
author_sort Sarah Bai
title Startup Investment Decision Support: Application of Venture Capital Scorecards Using Machine Learning Approaches
title_short Startup Investment Decision Support: Application of Venture Capital Scorecards Using Machine Learning Approaches
title_full Startup Investment Decision Support: Application of Venture Capital Scorecards Using Machine Learning Approaches
title_fullStr Startup Investment Decision Support: Application of Venture Capital Scorecards Using Machine Learning Approaches
title_full_unstemmed Startup Investment Decision Support: Application of Venture Capital Scorecards Using Machine Learning Approaches
title_sort startup investment decision support: application of venture capital scorecards using machine learning approaches
publisher MDPI AG
series Systems
issn 2079-8954
publishDate 2021-07-01
description This research aims to explore which kinds of metrics are more valuable in making investment decisions for a venture capital firm using machine learning methods. We measure the fit of developed companies to a venture capital firm’s investment thesis with a balanced scorecard based on quantitative and qualitative characteristics of the companies. Collaborating with the management team of Rose Street Capital (RSC), we explore the most influential factors of their balanced scorecard using their retrospective investment decisions of successful and failed startup companies. Our study employs six standard machine learning models and their counterparts with an additional feature selection technique. Our findings suggest that “planning strategy” and “team management” are the two most determinant factors in the firm’s investment decisions, implying that qualitative factors could be more important to startup evaluation. Furthermore, we analyzed which machine learning models were most accurate in predicting the firm’s investment decisions. Our experimental results demonstrate that the best machine learning models achieve an overall accuracy of 78% in making the correct investment decisions, with an average of 87% and 69% in predicting the decision of companies the firm would and would not have invested in, respectively. Our study provides convincing evidence that qualitative criteria could be more influential in investment decisions and machine learning models can be adapted to help provide which values may be more important to consider for a venture capital firm.
topic machine learning
venture capital
startups
investment decision support
predictability
risk factor analysis
url https://www.mdpi.com/2079-8954/9/3/55
work_keys_str_mv AT sarahbai startupinvestmentdecisionsupportapplicationofventurecapitalscorecardsusingmachinelearningapproaches
AT yijunzhao startupinvestmentdecisionsupportapplicationofventurecapitalscorecardsusingmachinelearningapproaches
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