AI-Driven Multi-Agent Simulation of Stratified Polyamory Systems: A Computational Framework for Optimizing Social Reproductive Efficiency
arXiv cs.AI / 3/24/2026
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Key Points
- The paper presents an AI-driven computational framework that combines agent-based modeling, multi-agent reinforcement learning (formulated with PPO), and LLM-empowered social simulation to study “Stratified Polyamory Systems” (SPS).
- It models SPS using heterogeneous agents with an A/B/C stratification, treating partner matching as a MARL problem and representing mating networks via graph neural networks (GNNs).
- The abstract frames SPS as a potential non-violent policy mechanism to address demographic decline and related social issues, claiming possible Pareto improvements in aggregate social welfare.
- It argues SPS could mitigate female motherhood penalties and male sexlessness through simulated institutional reforms like socialized child-rearing and inheritance changes.
- Preliminary computational results are reported as demonstrating the framework’s viability, alongside discussion drawing on evolutionary psychology, behavioral ecology, fairness, and institutional economics.
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