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AI社会における強化学習エージェントによる農業の創発
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ポイント
- 強化学習エージェントと動的な環境を用いた人工社会で、農業の起源と進化の原則を特定した。
- 個人の計画、社会的脆弱性、社会的学習、不可逆なロックイン効果が農業への移行を促進した。
- 社会的学習はチーターを抑制し、戦略の普及を可能にし、持続的な人口増加と資源増幅をもたらした。
Abstract
The origin of agriculture represents a major evolutionary transition and a paradigmatic example of how complex collective behaviors emerge from simple interactions. Here we introduce an artificial society of reinforcement learning agents embedded in a dynamic ecological environment to identify general principles underlying this transition. Within this system, agricultural practices emerge spontaneously - without explicit instruction - through the coupled dynamics of learning and environmental modification. We show that this transition is governed by four key ingredients: individual planning through the valuation of delayed rewards, social vulnerability to cheaters, stabilization via social learning, and an emergent lock-in effect that renders agriculture effectively irreversible once established. In particular, we demonstrate that social learning acts as a "firewall" that suppresses cheater invasion and enables the propagation of successful strategies, leading to sustained population growth and nonlinear amplification of domesticated resources. Together, these results reveal universal mechanisms linking individual decision-making, social interactions, and ecological feedbacks. More broadly, they highlight the potential of artificial societies as experimental platforms to study the emergence of cultural innovations and major evolutionary transitions.
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