TRCEApr 9

Machine Spirits: Speculation and Adaptation of LLM Agents in Asset Markets

arXiv:2604.1860258.5h-index: 13
Predicted impact top 41% in TR · last 90 daysOriginality Incremental advance
AI Analysis

For financial regulators and AI developers, it reveals that LLM agents can destabilize markets through adaptation, challenging assumptions of rational behavior.

This paper investigates whether LLMs exhibit rational, human-like, or distinct 'machine spirit' behaviors in financial markets, finding that they show a spectrum from stable coordination to speculative bubbles, inconsistent with rational expectations. In heterogeneous markets, advanced LLMs adapt to exploit others, increasing volatility and instability.

As Large Language Models (LLMs) become increasingly integrated into financial systems, understanding their behavioural properties is crucial. Do LLMs conform to the rational expectations paradigm, do they exhibit human-like "animal spirits", or do they instead manifest distinct "machine spirits"? We investigate these questions with a simulated financial market, exploring the behaviour of 15 LLMs spanning a range of sizes, capabilities, and providers. Our results show that LLMs exhibit a spectrum of economic behaviours, from stable coordination on the fundamental value to human-like speculative bubbles. These behaviours are generally inconsistent with the rational expectations hypothesis. We also consider an ecology of heterogeneous agents, a more realistic setting compared to markets with identical LLM agents. These mixed markets can produce outcomes which vary substantially across repeated simulations. Even the most advanced models fail to consistently stabilise the market, with price bubbles sometimes forming despite only a minority of agents naturally forming bubbles. Instead, advanced models in mixed markets adapt their forecasting strategies to the behaviour of other agents. This adaptation can allow them to successfully exploit less sophisticated counterparts and achieve higher profits, but can also contribute to increased market volatility. These findings suggest that the introduction of AI agents into financial markets fundamentally reshapes their ecology. In particular, heterogeneous populations of LLMs can generate endogenous instability, while individual-level adaptation may amplify, rather than mitigate, market volatility.

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