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首页> 外文期刊>Proceedings of the Workshop on Principles of Advanced and Distributed Simulation >Online Analysis of Simulation Data with Stream-based Data Mining
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Online Analysis of Simulation Data with Stream-based Data Mining

机译:基于流数据挖掘的模拟数据在线分析

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摘要

Discrete event simulation is an accepted instrument for investigating the dynamic behavior of complex systems and evaluating processes. Usually simulation experts conduct simulation experiments for a predetermined system specification by manually varying parameters through educated assumptions and according to a prior defined goal. As an alternative, data farming and knowledge discovery in simulation data are ongoing and popular methods in order to uncover unknown relationships and effects in the model to gain useful information about the underlying system. Those methods usually demand broad scale and data intensive experimental design, so computing time can quickly become large. As a solution to that, we extend an existing concept of knowledge discovery in simulation data with an online stream mining component to get data mining results even while experiments are still running. For this purpose, we introduce a method for using decision tree classification in combination with clustering algorithms for analyzing simulation output data that considers the flow of experiments as a data stream. A prototypical implementation proves the basic applicability of the concept and yields large possibilities for future research.
机译:离散事件模拟是用于调查复杂系统的动态行为和评估过程的可接受的仪器。通常,仿真专家通过通过受过教育的假设手动改变参数并根据现有的目标来进行预定系统规范的模拟实验。作为替代,仿真数据中的数据种植和知识发现正在进行和流行的方法,以便在模型中揭示未知的关系和效果,以获得有关基础系统的有用信息。这些方法通常需要广泛的规模和数据密集型实验设计,因此计算时间可以迅速变大。作为解决方案,我们将在模拟数据中扩展了现有的知识发现概念,其中包含在线流挖掘组件,即使在实验仍在运行时也能获得数据挖掘结果。为此目的,我们介绍一种使用决策树分类的方法,结合聚类算法,用于分析考虑实验流作为数据流的模拟输出数据。原型实施证明了该概念的基本适用性,为未来的研究产生了大的可能性。

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