MAAICYDSAOFeb 20, 2023

The evolutionary advantage of guilt: co-evolution of social and non-social guilt in structured populations

arXiv:2302.09859v26 citationsh-index: 46
Originality Incremental advance
AI Analysis

This research addresses the problem of understanding guilt evolution for designing ethical artificial intelligence, though it is incremental as it builds on existing evolutionary game theory methods.

The study investigated how guilt evolves as a behavioral trait in structured populations, finding that in lattice and scale-free networks, strategies favoring emotional guilt dominate a broader range of costs and lead to higher cooperation levels compared to non-structured populations.

Building ethical machines may involve bestowing upon them the emotional capacity to self-evaluate and repent on their actions. While apologies represent potential strategic interactions, the explicit evolution of guilt as a behavioural trait remains poorly understood. Our study delves into the co-evolution of two forms of emotional guilt: social guilt entails a cost, requiring agents to exert efforts to understand others' internal states and behaviours; and non-social guilt, which only involves awareness of one's own state, incurs no social cost. Resorting to methods from evolutionary game theory, we study analytically, and through extensive numerical and agent-based simulations, whether and how guilt can evolve and deploy, depending on the underlying structure of the systems of agents. Our findings reveal that in lattice and scale-free networks, strategies favouring emotional guilt dominate a broader range of guilt and social costs compared to non-structured well-mixed populations, so leading to higher levels of cooperation. In structured populations, both social and non-social guilt can thrive through clustering with emotionally inclined strategies, thereby providing protection against exploiters, particularly for less costly non-social strategies. These insights shed light on the complex interplay of guilt and cooperation, enhancing our understanding of ethical artificial intelligence.

Foundations

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

Your Notes