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Training LSTM-neural networks on early warning signals of declining cooperation in simulated repeated public good games

机译:对LSTM神经网络进行模拟重复公共物品博弈中合作减少的预警信号的培训

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摘要

We present results of attempts to expand and enhance the predictive power of Early Warning Signals (EWS) for Critical Transitions (Scheffer et al. 2009) through the deployment of a Long-Short-Term-Memory (LSTM) Neural Network on agent-based simulations of a Repeated Public Good Game, which due to positive feedbacks on experience and social entrainment transits abruptly from majority cooperation to majority defection and back. Our method extension is inspired by several known deficiencies of EWS and by lacking possibilities to consider micro-level interaction in the so far primarily used simulation methods. We find that
机译:我们提出了通过在基于代理的基础上部署长短期记忆(LSTM)神经网络来扩大和增强关键转变的预警信号(EWS)的预测能力的尝试结果(Scheffer等2009)重复公共物品博弈的模拟,由于对经验和社会约束的积极反馈,该过程突然从多数合作过渡到多数叛逃并返回。我们的方法扩展是受到EWS几个已知缺陷的启发,并且由于缺乏在迄今为止主要使用的仿真方法中考虑微观交互的可能性。我们发现

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