Solving Dynamic Principal-Agent Problems with a Rationally Inattentive Principal
Tong Mu, Stephan Zheng, Alexander Trott

TL;DR
This paper introduces RIRL, a deep reinforcement learning framework that models a boundedly rational Principal in dynamic Principal-Agent problems, revealing how attention costs influence incentive structures and economic outcomes.
Contribution
It develops a novel RL-based approach to analyze bounded rationality in complex, multi-agent, sequential economic settings, providing new insights into incentive design under attention costs.
Findings
Attention costs lead to simpler, less profitable wages.
Inattention to outputs reduces wage gaps based on ability.
Inattention to effort creates a social dilemma where Agents work harder for free.
Abstract
Principal-Agent (PA) problems describe a broad class of economic relationships characterized by misaligned incentives and asymmetric information. The Principal's problem is to find optimal incentives given the available information, e.g., a manager setting optimal wages for its employees. Whereas the Principal is often assumed rational, comparatively little is known about solutions when the Principal is boundedly rational, especially in the sequential setting, with multiple Agents, and with multiple information channels. Here, we develop RIRL, a deep reinforcement learning framework that solves such complex PA problems with a rationally inattentive Principal. Such a Principal incurs a cost for paying attention to information, which can model forms of bounded rationality. We use RIRL to analyze rich economic phenomena in manager-employee relationships. In the single-step setting, 1) RIRL…
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Taxonomy
TopicsExperimental Behavioral Economics Studies · Auction Theory and Applications
