LLM economicus? Mapping the Behavioral Biases of LLMs via Utility Theory

22 Pages Posted: 16 Sep 2024

See all articles by Jillian Ross

Jillian Ross

MIT CSAIL

Yoon Kim

MIT CSAIL

Andrew W. Lo

Massachusetts Institute of Technology (MIT) - Laboratory for Financial Engineering

Date Written: July 13, 2024

Abstract

Humans are not homo economicus (i.e., rational economic beings). As humans, we exhibit systematic behavioral biases such as loss aversion, anchoring, framing, etc., which lead us to make suboptimal economic decisions. Insofar as such biases may be embedded in text data on which large language models (LLMs) are trained, to what extent are LLMs prone to the same behavioral biases? Understanding these biases in LLMs is crucial for deploying LLMs to support human decision-making. We propose utility theory-a paradigm at the core of modern economic theory-as an approach to evaluate the economic biases of LLMs. Utility theory enables the quantification and comparison of economic behavior against benchmarks such as perfect rationality or human behavior. To demonstrate our approach, we quantify and compare the economic behavior of a variety of open-and closed-source LLMs. We find that the economic behavior of current LLMs is neither entirely human-like nor entirely economicus-like. We also find that most current LLMs struggle to maintain consistent economic behavior across settings. Finally, we illustrate how our approach can measure the effect of interventions such as prompting on economic biases.

Keywords: Large Language Models, Artificial Intelligence, Behavioral Biases, Utility Theory

JEL Classification: D90, D91, E70, E71, G40, G41, C45

Suggested Citation

Ross, Jillian and Kim, Yoon and Lo, Andrew W., LLM economicus? Mapping the Behavioral Biases of LLMs via Utility Theory (July 13, 2024). Available at SSRN: https://ssrn.com/abstract=4926791 or http://dx.doi.org/10.2139/ssrn.4926791

Jillian Ross

MIT CSAIL ( email )

Yoon Kim

MIT CSAIL ( email )

Andrew W. Lo (Contact Author)

Massachusetts Institute of Technology (MIT) - Laboratory for Financial Engineering ( email )

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