A New Lower Bound for the Random Offerer Mechanism in Bilateral Trade using AI-Guided Evolutionary Search
Yang Cai, Vineet Gupta, Zun Li, Aranyak Mehta

TL;DR
This paper uses AI-guided evolutionary search to find a new worst-case example in bilateral trade, proving that the Random-Offerer mechanism can perform at most about 2.075 times worse than the optimal, improving previous bounds.
Contribution
It introduces an AI-driven approach to identify a new lower bound on the worst-case efficiency gap of the Random-Offerer mechanism in bilateral trade.
Findings
Established a new lower bound of 2.0749 for the GFT ratio
Demonstrated the effectiveness of AI-guided search in mechanism analysis
Widened the known efficiency gap in bilateral trade mechanisms
Abstract
The celebrated Myerson--Satterthwaite theorem shows that in bilateral trade, no mechanism can be simultaneously fully efficient, Bayesian incentive compatible (BIC), and budget balanced (BB). This naturally raises the question of how closely the gains from trade (GFT) achievable by a BIC and BB mechanism can approximate the first-best (fully efficient) benchmark. The optimal BIC and BB mechanism is typically complex and highly distribution-dependent, making it difficult to characterize directly. Consequently, much of the literature analyzes simpler mechanisms such as the Random-Offerer (RO) mechanism and establishes constant-factor guarantees relative to the first-best GFT. An important open question concerns the worst-case performance of the RO mechanism relative to first-best (FB) efficiency. While it was originally hypothesized that the approximation ratio…
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Taxonomy
TopicsAuction Theory and Applications · Game Theory and Voting Systems · Game Theory and Applications
