In Trust We Survive: Emergent Trust Learning
AI 摘要
提出了Emergent Trust Learning (ETL),一种轻量级的、基于信任的控制算法。
主要贡献
- 提出ETL算法,无需大量计算和通信开销
- 验证了ETL在资源竞争环境中的有效性
- 证明了ETL在囚徒困境等博弈论场景中的泛化能力
方法论
设计轻量级的信任状态,调节记忆、探索和动作选择,仅需个体奖励和局部观察。
原文摘要
We introduce Emergent Trust Learning (ETL), a lightweight, trust-based control algorithm that can be plugged into existing AI agents. It enables these to reach cooperation in competitive game environments under shared resources. Each agent maintains a compact internal trust state, which modulates memory, exploration, and action selection. ETL requires only individual rewards and local observations and incurs negligible computational and communication overhead. We evaluate ETL in three environments: In a grid-based resource world, trust-based agents reduce conflicts and prevent long-term resource depletion while achieving competitive individual returns. In a hierarchical Tower environment with strong social dilemmas and randomised floor assignments, ETL sustains high survival rates and recovers cooperation even after extended phases of enforced greed. In the Iterated Prisoner's Dilemma, the algorithm generalises to a strategic meta-game, maintaining cooperation with reciprocal opponents while avoiding long-term exploitation by defectors. Code will be released upon publication.