An Algorithm-to-Contract Framework without Demand Queries
Ilan Doron-Arad, Hadas Shachnai, Gilad Shmerler, Inbal Talgam-Cohen

TL;DR
This paper introduces an algorithm-to-contract framework that transforms combinatorial algorithms into contract design solutions without requiring demand queries, achieving near-optimal approximations.
Contribution
It develops a novel local-to-global approach for contract design, extending classic algorithms to handle complex combinatorial constraints and multi-agent settings.
Findings
Lifted FPTAS for budgeted maximization to contract problems
Applied framework to matroid and matching constraints with near-optimal results
First approximation schemes for multi-agent contract settings beyond additive rewards
Abstract
Consider costly and time-consuming tasks that add up to the success of a project, and must be fitted into a given time-frame. This is an instance of the classic budgeted maximization (knapsack) problem, which admits an FPTAS. Now assume an agent is performing these tasks on behalf of a principal, who is the one to reap the rewards if the project succeeds. The principal must design a contract to incentivize the agent. Is there still an approximation scheme? In this work we lay the foundations for an algorithm-to-contract framework, which transforms algorithms for combinatorial problems to handle contract design problems subject to the same combinatorial constraints. Our approach diverges from previous works in avoiding the assumption of demand oracle access. As an example, for budgeted maximization, we show how to "lift" the classic FPTAS to the best-possible (approximately-IC) FPTAS…
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