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Initializing Agent-Based Models with Clustering Archetypes

机译:使用聚类原型初始化基于代理的模型

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摘要

Agent-based models are a powerful tool for predicting population level behaviors; however their performance can be sensitive to the initial simulation conditions. This paper introduces a procedure for leveraging large datasets to initialize agent-based simulations in which the population is abstracted into a set of archetypes. We show that these archetypes can be discovered using clustering and evaluate the benefits of selecting clusters based on their stability over time. Our experiments on the GitHub dataset demonstrate that simulation runs performed with the clustering archetypes are more successful at predicting large-scale activity patterns.
机译:基于主体的模型是预测人群水平行为的强大工具。但是,它们的性能可能对初始仿真条件敏感。本文介绍了一种利用大型数据集来初始化基于代理的仿真的过程,在该过程中,总体被抽象为一组原型。我们表明,可以使用聚类发现这些原型,并根据其随时间的稳定性来评估选择聚类的好处。我们在GitHub数据集上的实验表明,使用聚类原型进行的模拟运行在预测大规模活动模式方面更为成功。

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