基于agent的建模中复杂行为的机器学习

E. Augustijn, S. Abdulkareem, Mohammed Hikmat Sadiq, A. A. Albabawat
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引用次数: 3

摘要

在过去几年中,使用机器学习算法来丰富基于代理的模型的情况有所增加。当结合数据驱动方法的优势和探索未来情况和人为干预的可能性时,这种集成增加了价值。然而,这种整合仍处于初级阶段。学习算法和基于智能体的模型的完全集成通常在技术上具有挑战性,并且可能使智能体的行为规则不那么透明。需要进行实验,使用相同的基于代理的模型比较不同的集成策略,以确定每种方法何时最有效。在本文中,我们提出了同一霍乱模型的两个版本的比较。在最初的版本中,代理的行为是由学习算法直接驱动的。在我们的实验中,我们通过直接在数据上应用学习算法来取代这种策略,并将结果实现为模型中的行为规则。结果表明,当集成的目标是创建显示数据驱动特征的代理时,基于这些数据派生规则是一个很好的选择。此外,该策略的一个关键元素是数据集。需要一个大的数据集来表示不同类型的代理在整个时间段内的行为。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning to Derive Complex Behaviour in Agent-Based Modellzing
The use of machine learning algorithms to enrich agent-based models has increased over the past years. This integration adds value when combining the advantages of the data-driven approach and the possibilities to explore future situations and human interventions. However, this integrating is still in its infant stage. Full integration of learning algorithms and agent-based models is often technically challenging and can make the behavioural rules of the agents less transparent. Experiments are needed in which different integration strategies are compared using the same agent-based model to determine when each of these approaches is most effective. In this paper, we present a comparison of two versions of the same cholera model. In the initial version, agent behaviour was driven directly by a learning algorithm. In our experiments, we replace this strategy by applying a learning algorithm directly on the data and implement the outcomes as behaviour rules in the model. The results showed that when the integration aims to create agents that show characteristics that are data-driven, deriving rules based on these data is a good alternative. In addition, a key element in this strategy is the dataset. A large dataset representing the behaviour of different types of agents over the complete time period is needed.
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