首页> 外文会议>Ninth ACM SIGKDD International Conference on Knowledge Discovery and Data Mining (KDD-2003) Aug 24-27, 2003 Washington, DC, USA >Architecting a Knowledge Discovery Engine for Military Commanders Utilizing Massive Runs of Simulations
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Architecting a Knowledge Discovery Engine for Military Commanders Utilizing Massive Runs of Simulations

机译:利用大规模模拟为军事指挥官设计知识发现引擎

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The Marine Corps' Project Albert seeks to model complex phenomenon by observing the behavior of relatively simple simulations over thousands of runs. A rich data base is developed by running the simulations thousands of times, varying the agent and scenario input parameters as well as the random seeds. Exploring this result space may provide significant insight into nonlinear, surprising, and emergent behaviors. Capturing these results can provide a path for making the results usable for decision support to a military commander. This paper presents two data mining approaches, rule discovery and Bayesian networks, for analyzing the Albert simulation data. The first approach generates rales from the data and then uses them to create a descriptive model. The second generates Bayesian Networks which provide a quantitative belief model for decision support. Both of these approaches as well as the Project Albert simulations are framed in the context of a system architecture for decision support.
机译:海军陆战队的阿尔伯特计划试图通过观察数千次运行中相对简单的模拟的行为来对复杂现象进行建模。通过运行数千次仿真,更改代理和方案输入参数以及随机种子,可以开发出丰富的数据库。探索此结果空间可能会提供有关非线性,令人惊讶和紧急行为的重要见解。捕获这些结果可以为使结果可用于军事指挥官的决策支持提供一条途径。本文提出了两种数据挖掘方法,即规则发现和贝叶斯网络,用于分析Albert模拟数据。第一种方法根据数据生成规则,然后使用它们创建描述性模型。第二个生成贝叶斯网络,该贝叶斯网络为决策支持提供了定量的信念模型。这两种方法以及阿尔伯特项目仿真均在系统架构的框架内进行决策支持。

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