AI-Powered Trading, Algorithmic Collusion, and Price Efficiency
Professor Winston Dou
Assistant Professor of Finance
The Wharton School
University of Pennsylvania
The integration of algorithmic trading and reinforcement learning, known as AI-powered trading, has significantly impacted capital markets. This study utilizes a model of imperfect competition among informed traders with asymmetric information to explore the implications of AI-powered trading strategies on informed traders’ market power and price efficiency. Our results demonstrate that informed AI traders can collude and generate substantial profits by strategically manipulating low order flows, even without explicit coordination that violates antitrust regulations. This algorithmic collusion arises from two mechanisms: collusion through biased learning and collusion through punishment threat. Collusion through punishment threat creates a paradoxical situation in terms of price informativeness. Consequently, in a market with prevalent AI-powered trading and collusion through punishment threat, perfect price efficiency remains unattainable.