利用机器学习解决模拟和大数据界面的挑战

P. Giabbanelli
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引用次数: 14

摘要

建模与仿真(M&S)和机器学习(ML)已经分别使用了几十年。通过将理论驱动的M&S模型的结果与最准确的数据驱动的ML模型的结果进行对比,它们也可以直接用于同一研究中。在本文中,我们提出了一种范式转变,从将ML和M&S视为两个独立的活动,到确定它们的整合如何解决大数据环境中出现的挑战。由于一些作品已经检查了概念建模或模型构建的这种交互(例如,用ML创建组件并将其嵌入M&S模型中),我们的分析致力于三个相对较少研究的阶段:使用ML校准仿真模型,通过使用ML进行实验来处理大型搜索空间的问题,并通过将ML应用于输出或用户动作的特征来识别模型输出的正确可视化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Solving Challenges at the Interface of Simulation and Big Data Using Machine Learning
Modeling & Simulation (M&S) and Machine Learning (ML) have been used separately for decades. They can also straightforwardly be employed in the same study by contrasting the results of a theory-driven M&S model with the most accurate data-driven ML model. In this paper, we propose a paradigm shift from seeing ML and M&S as two independent activities to identifying how their integration can solve challenges that emerge in a big data context. Since several works have already examined this interaction for conceptual modeling or model building (e.g., creating components with ML and embedding them in the M&S model), our analysis is devoted on three relatively under-studied stages: calibrating a simulation model using ML, dealing with the issues of large search space by employing ML for experimentation, and identifying the right visualizations of model output by applying ML to characteristics of the output or actions of the users.
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