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THE INFORMATION BOTTLENECK METHOD FOR OPTIMAL PREDICTION OF MULTILEVEL AGENT-BASED SYSTEMS

机译:基于多层次Agent系统的最优预测的信息博览方法

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Because the dynamics of complex systems is the result of both decisive local events and reinforced global effects, the prediction of such systems could not do without a genuine multilevel approach. This paper proposes to found such an approach on information theory. Starting from a complete microscopic description of the system dynamics, we are looking for observables of the current state that allows to efficiently predict future observables. Using the framework of the information bottleneck (IB) method, we relate optimality to two aspects: the complexity and the predictive capacity of the retained measurement. Then, with a focus on agent-based models (ABMs), we analyze the solution space of the resulting optimization problem in a generic fashion. We show that, when dealing with a class of feasible measurements that are consistent with the agent structure, this solution space has interesting algebraic properties that can be exploited to efficiently solve the problem. We then present results of this general framework for the voter model (VM) with several topologies and show that, especially when predicting the state of some sub-part of the system, multilevel measurements turn out to be the optimal predictors.
机译:由于复杂系统的动力学是决定性的局部事件和增强的全球效应的结果,因此,如果没有真正的多层次方法,就无法对此类系统进行预测。本文建议找到一种有关信息论的方法。从对系统动力学的完整微观描述开始,我们正在寻找可有效预测未来可观察物的当前状态的可观察物。使用信息瓶颈(IB)方法的框架,我们将最优性与两个方面相关:保留度量的复杂性和预测能力。然后,重点关注基于代理的模型(ABM),我们以通用方式分析了所产生的优化问题的解决空间。我们表明,当处理与代理结构一致的一类可行度量时,此解决方案空间具有有趣的代数性质,可以利用这些性质有效地解决问题。然后,我们介绍具有几种拓扑的表决器模型(VM)的通用框架的结果,并表明,尤其是在预测系统某些子部分的状态时,多级测量结果是最佳的预测因子。

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