Balancing Profit and Fairness in Risk-Based Pricing Markets
By: Jesse Thibodeau , Hadi Nekoei , Afaf Taïk and more
Potential Business Impact:
Makes sure everyone can afford important things.
Dynamic, risk-based pricing can systematically exclude vulnerable consumer groups from essential resources such as health insurance and consumer credit. We show that a regulator can realign private incentives with social objectives through a learned, interpretable tax schedule. First, we provide a formal proposition that bounding each firm's \emph{local} demographic gap implicitly bounds the \emph{global} opt-out disparity, motivating firm-level penalties. Building on this insight we introduce \texttt{MarketSim} -- an open-source, scalable simulator of heterogeneous consumers and profit-maximizing firms -- and train a reinforcement learning (RL) social planner (SP) that selects a bracketed fairness-tax while remaining close to a simple linear prior via an $\mathcal{L}_1$ regularizer. The learned policy is thus both transparent and easily interpretable. In two empirically calibrated markets, i.e., U.S. health-insurance and consumer-credit, our planner simultaneously raises demand-fairness by up to $16\%$ relative to unregulated Free Market while outperforming a fixed linear schedule in terms of social welfare without explicit coordination. These results illustrate how AI-assisted regulation can convert a competitive social dilemma into a win-win equilibrium, providing a principled and practical framework for fairness-aware market oversight.
Similar Papers
Personalized Pricing in Social Networks with Individual and Group Fairness Considerations
Computers and Society
Smarter pricing helps everyone fairly, not just stores.
Scalable Fairness Shaping with LLM-Guided Multi-Agent Reinforcement Learning for Peer-to-Peer Electricity Markets
Systems and Control
Makes selling home solar power fairer for everyone.
Regulating Spatial Fairness in a Tripartite Micromobility Sharing System via Reinforcement Learning
Systems and Control
Makes shared bikes available everywhere fairly.