The Pseudo-Dimension of Contracts
Paul Duetting, Michal Feldman, Tomasz Ponitka, Ermis Soumalias

TL;DR
This paper analyzes the complexity of contract design using pseudo-dimension, providing optimal tradeoffs, learning algorithms, and bounds for different contract classes in offline and online settings.
Contribution
It introduces a pseudo-dimension framework for contract classes, establishing optimal tradeoffs, and develops efficient algorithms with theoretical guarantees for learning near-optimal contracts.
Findings
Pseudo-dimension measures the complexity of contract classes.
Linear and bounded contracts have near-optimal sample complexity bounds.
Unbounded contracts cannot be learned with any algorithm.
Abstract
Algorithmic contract design studies scenarios where a principal incentivizes an agent to exert effort on her behalf. In this work, we focus on settings where the agent's type is drawn from an unknown distribution, and formalize an offline learning framework for learning near-optimal contracts from sample agent types. A central tool in our analysis is the notion of pseudo-dimension from statistical learning theory. Beyond its role in establishing upper bounds on the sample complexity, pseudo-dimension measures the intrinsic complexity of a class of contracts, offering a new perspective on the tradeoffs between simplicity and optimality in contract design. Our main results provide essentially optimal tradeoffs between pseudo-dimension and representation error (defined as the loss in principal's utility) with respect to linear and bounded contracts. Using these tradeoffs, we derive sample-…
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Taxonomy
TopicsLaw, Economics, and Judicial Systems
MethodsFocus
