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首页> 外文期刊>Proceedings of the Workshop on Principles of Advanced and Distributed Simulation >Modeling Human Temporal Dynamics in Agent-Based Simulations
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Modeling Human Temporal Dynamics in Agent-Based Simulations

机译:基于代理的模拟中的人为时间动态建模

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摘要

Time-based habitual behavior is exhibited in humans globally. Given that sleep has such an innate influence on our daily activities, modeling the patterns of the sleep cycle in order to understand the extent of its impact allows us to also capture stable behavioral features that can be utilized for predictive measures. In this paper we show that patterns of temporal preference are consistent and resilient across users of several real-world datasets. Furthermore, we integrate those patterns into large-scale agent-based models to simulate the activity of users in the involved datasets to validate predictive accuracy. Following simulations reveal that incorporating clustering features based on time-based behavior into agent-based models not only result in a significant decrease in computational overhead, but also result in predictive accuracy comparable to the baseline models.
机译:基于时间的惯常行为在全球人类中展出。 鉴于睡眠对我们的日常活动具有如此天生的影响,建模睡眠周期的模式,以了解其影响的程度,使我们还可以捕获可用于预测措施的稳定行为特征。 在本文中,我们表明,时间偏好模式在几个现实世界数据集的用户之间是一致的和困难的。 此外,我们将这些模式集成到基于大规模的代理的模型中,以模拟涉及数据集中的用户的活动,以验证预测精度。 在仿真之后,揭示基于基于时间的行为将聚类特征结合到基于代理的模型,而不仅导致计算开销的显着降低,而且还导致与基线模型相当的预测精度。

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