AgentSimulator: An Agent-based Approach for Data-driven Business Process Simulation

Lukas Kirchdorfer, Robert Blümel, Timotheus Kampik, Han van der Aa, Heiner Stuckenschmidt
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Abstract

Business process simulation (BPS) is a versatile technique for estimating process performance across various scenarios. Traditionally, BPS approaches employ a control-flow-first perspective by enriching a process model with simulation parameters. Although such approaches can mimic the behavior of centrally orchestrated processes, such as those supported by workflow systems, current control-flow-first approaches cannot faithfully capture the dynamics of real-world processes that involve distinct resource behavior and decentralized decision-making. Recognizing this issue, this paper introduces AgentSimulator, a resource-first BPS approach that discovers a multi-agent system from an event log, modeling distinct resource behaviors and interaction patterns to simulate the underlying process. Our experiments show that AgentSimulator achieves state-of-the-art simulation accuracy with significantly lower computation times than existing approaches while providing high interpretability and adaptability to different types of process-execution scenarios.
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AgentSimulator:基于代理的数据驱动型业务流程模拟方法
业务流程模拟(BPS)是一种多用途技术,用于估算各种情况下的流程性能。传统的 BPS 方法采用控制流优先的视角,通过模拟参数来丰富流程模型。虽然这种方法可以模仿集中协调流程的行为,如工作流系统支持的流程,但目前的控制流优先方法无法忠实捕捉现实世界流程的动态,因为这些流程涉及不同的资源行为和分散决策。认识到这一问题后,本文引入了 AgentSimulator,这是一种资源优先的 BPS 方法,它能从事件日志中发现多代理系统,模拟不同的资源行为和交互模式,从而模拟底层流程。我们的实验表明,与现有方法相比,AgentSimulator 的计算时间大大缩短,达到了最先进的仿真精度,同时对不同类型的流程执行场景具有很高的可解释性和适应性。
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