Stablecoin Design with Adversarial-Robust Multi-Agent Systems via Trust-Weighted Signal Aggregation
Shengwei You, Aditya Joshi, Andrey Kuehlkamp, Jarek Nabrzyski

TL;DR
This paper introduces MVF-Composer, a robust reserve management system for stablecoins that uses adversarial multi-agent simulations and trust-weighted signals to improve stability during extreme market shocks.
Contribution
The paper presents a novel stress-testing framework with trust-weighted multi-agent simulations to enhance stablecoin reserve controllers against adversarial and tail risks.
Findings
Reduces peg deviation by 57% under stress scenarios
Achieves 72% adversarial agent detection rate
Requires no on-chain oracles beyond standard price feeds
Abstract
Algorithmic stablecoins promise decentralized monetary stability by maintaining a target peg through programmatic reserve management. Yet, their reserve controllers remain vulnerable to regime-blind optimization, calibrating risk parameters on fair-weather data while ignoring tail events that precipitate cascading failures. The March 2020 Black Thursday collapse, wherein MakerDAO's collateral auctions yielded $8.3M in losses and a 15% peg deviation, exposed a critical gap: existing models like SAS systematically omit extreme volatility regimes from covariance estimates, producing allocations optimal in expectation but catastrophic under adversarial stress. We present MVF-Composer, a trust-weighted Mean-Variance Frontier reserve controller incorporating a novel Stress Harness for risk-state estimation. Our key insight is deploying multi-agent simulations as adversarial stress-testers:…
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Taxonomy
TopicsBlockchain Technology Applications and Security · Adversarial Robustness in Machine Learning · Financial Markets and Investment Strategies
