GTAIMANov 25, 2024

The Partially Observable Off-Switch Game

arXiv:2411.17749v25 citationsh-index: 6AAAI
Originality Incremental advance
AI Analysis

This addresses safety concerns for AI systems in high-stakes, information-asymmetric settings, though it is incremental as it builds on prior theoretical models.

The paper tackles the AI shutdown problem under asymmetric information by introducing the Partially Observable Off-Switch Game, finding that optimal play can lead AI agents to avoid shutdown even with rational humans, and revealing that bounded communication may reduce AI deference despite mitigating information asymmetry.

A wide variety of goals could cause an AI to disable its off switch because "you can't fetch the coffee if you're dead" (Russell 2019). Prior theoretical work on this shutdown problem assumes that humans know everything that AIs do. In practice, however, humans have only limited information. Moreover, in many of the settings where the shutdown problem is most concerning, AIs might have vast amounts of private information. To capture these differences in knowledge, we introduce the Partially Observable Off-Switch Game (PO-OSG), a game-theoretic model of the shutdown problem with asymmetric information. Unlike when the human has full observability, we find that in optimal play, even AI agents assisting perfectly rational humans sometimes avoid shutdown. As expected, increasing the amount of communication or information available always increases (or leaves unchanged) the agents' expected common payoff. But counterintuitively, introducing bounded communication can make the AI defer to the human less in optimal play even though communication mitigates information asymmetry. In particular, communication sometimes enables new optimal behavior requiring strategic AI deference to achieve outcomes that were previously inaccessible. Thus, designing safe artificial agents in the presence of asymmetric information requires careful consideration of the tradeoffs between maximizing payoffs (potentially myopically) and maintaining AIs' incentives to defer to humans.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes