AI-Driven Multi-Agent Simulation of Stratified Polyamory Systems: A Computational Framework for Optimizing Social Reproductive Efficiency

arXiv cs.AI / 3/24/2026

💬 OpinionSignals & Early TrendsIdeas & Deep AnalysisModels & Research

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.

Abstract

Contemporary societies face a severe crisis of demographic reproduction. Global fertility rates continue to decline precipitously, with East Asian nations exhibiting the most dramatic trends -- China's total fertility rate (TFR) fell to approximately 1.0 in 2023, while South Korea's dropped below 0.72. Simultaneously, the institution of marriage is undergoing structural disintegration: educated women rationally reject unions lacking both emotional fulfillment and economic security, while a growing proportion of men at the lower end of the socioeconomic spectrum experience chronic sexual deprivation, anxiety, and learned helplessness. This paper proposes a computational framework for modeling and evaluating a Stratified Polyamory System (SPS) using techniques from agent-based modeling (ABM), multi-agent reinforcement learning (MARL), and large language model (LLM)-empowered social simulation. The SPS permits individuals to maintain a limited number of legally recognized secondary partners in addition to one primary spouse, combined with socialized child-rearing and inheritance reform. We formalize the A/B/C stratification as heterogeneous agent types in a multi-agent system and model the matching process as a MARL problem amenable to Proximal Policy Optimization (PPO). The mating network is analyzed using graph neural network (GNN) representations. Drawing on evolutionary psychology, behavioral ecology, social stratification theory, computational social science, algorithmic fairness, and institutional economics, we argue that SPS can improve aggregate social welfare in the Pareto sense. Preliminary computational results demonstrate the framework's viability in addressing the dual crisis of female motherhood penalties and male sexlessness, while offering a non-violent mechanism for wealth dispersion analogous to the historical Chinese Grace Decree (Tui'en Ling).

AI-Driven Multi-Agent Simulation of Stratified Polyamory Systems: A Computational Framework for Optimizing Social Reproductive Efficiency | AI Navigate