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首页> 外文期刊>International Journal of Information Technology & Decision Making >REINFORCEMENT LEARNING FOR DECISION-MAKING IN A BUSINESS SIMULATOR
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REINFORCEMENT LEARNING FOR DECISION-MAKING IN A BUSINESS SIMULATOR

机译:在业务模拟器中进行决策的强化学习

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Business simulators are powerful tools for both supporting the decision-making process of business managers as well as for business education. An example is SIMBA (SIMulator for Business Administration), a powerful simulator which is currently used as a web-based platform for business education in different institutions. In this paper, we propose the application of reinforcement learning (RL) for the creation of intelligent agents that can manage virtual companies in SIMBA. This application is not trivial, given the particular intrinsic characteristics of SIMBA: it is a generalized domain where hundreds of parameters modify the domain behavior; it is a multi-agent domain where both cooperation and competition among different agents can coexist; it is required to set dozens of continuous decision variables for a given business decision, which is made only after the study of hundreds of continuous variables. We will demonstrate empirically that all these challenges can be overcome through theuse of RL, showing results for different learning scenarios.
机译:业务模拟器是强大的工具,可支持业务经理的决策过程以及业务培训。一个示例就是SIMBA(企业管理模拟器),它是功能强大的模拟器,目前已用作不同机构中基于Web的商业教育平台。在本文中,我们提出了强化学习(RL)在创建可以管理SIMBA中的虚拟公司的智能代理程序中的应用。鉴于SIMBA的特定固有特性,该应用程序并非易事:它是一个通用域,其中数百个参数修改域行为;它是一个多代理域,不同代理之间的合作与竞争可以共存。它需要为给定的业务决策设置数十个连续决策变量,这只有在研究了数百个连续变量之后才能做出。我们将通过经验证明,通过使用RL可以克服所有这些挑战,并显示针对不同学习场景的结果。

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