Venture Capital (Mis)Allocation in the Age of AI

66 Pages Posted: 28 Oct 2022

See all articles by Victor Lyonnet

Victor Lyonnet

University of Michigan at Ann Arbor - Finance

Léa H. Stern

University of Washington - Michael G. Foster School of Business

Multiple version iconThere are 2 versions of this paper

Date Written: June 2, 2022

Abstract

We use machine learning to study how venture capitalists (VCs) make investment decisions.
Using a large administrative data set on French entrepreneurs that contains VC-backed as well as non-VC-backed firms, we use algorithmic predictions of new ventures’ performance to identify the most promising ventures. We find that VCs invest in some firms that perform predictably poorly and pass on others that perform predictably well. Consistent with models of stereotypical thinking, we show that VCs select entrepreneurs whose characteristics are representative of the most successful entrepreneurs (i.e., characteristics that occur more frequently among the best performing entrepreneurs relative to the other ones). Although VCs rely on accurate stereotypes, they make prediction errors as they exaggerate some representative features of success in their selection of entrepreneurs (e.g., male, highly educated, Paris-based, and high-tech entrepreneurs).
Overall, algorithmic decision aids show promise to broaden the scope of VCs’ investments and founder diversity.

Suggested Citation

Lyonnet, Victor and Stern, Lea H., Venture Capital (Mis)Allocation in the Age of AI (June 2, 2022). Proceedings of the EUROFIDAI-ESSEC Paris December Finance Meeting 2022, Available at SSRN: https://ssrn.com/abstract=4260882 or http://dx.doi.org/10.2139/ssrn.4260882

Victor Lyonnet (Contact Author)

University of Michigan at Ann Arbor - Finance ( email )

701 Tappan Street
Ann Arbor, MI 48109-1234
United States

HOME PAGE: http://www.victorlyonnet.com

Lea H. Stern

University of Washington - Michael G. Foster School of Business ( email )

Box 353200
Seattle, WA 98195-3200
United States

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