Mining characteristic rules for understanding simulation data

Jianping Zhang, J. Bala, P. Barry, T. Meyer, S. Johnson
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引用次数: 3

Abstract

The Marine Corps' Project Albert seeks to model complex phenomenon by observing the behavior of relatively simple simulations over thousands of runs. These simulations are based upon lightweight agents, whose essential behavior has been distilled down to a small number of rules. By varying the parameters of these rules, Project Albert simulations can explore emergent complex nonlinear behaviors with the aim of developing insight not readily provided by first principle mathematical models. Thousands of runs of Albert simulation models create large amount of data that describe the association/correlation between the simulation input and output parameters. Understanding the associations between the simulation input and output parameters is critical to understanding the simulated complex phenomenon. This paper presents a data mining approach to analyzing the large scale and highly uncertain Albert simulation data. Specifically, a characteristic rule discovery algorithm is described in the paper together with its application to the Albert simulation runtime data.
挖掘特征规则以理解仿真数据
海军陆战队的“阿尔伯特计划”试图通过观察相对简单的模拟过程中数千次运行的行为来建立复杂现象的模型。这些模拟基于轻量级代理,其基本行为已被提炼为少量规则。通过改变这些规则的参数,Albert项目模拟可以探索紧急的复杂非线性行为,目的是发展第一性原理数学模型无法提供的洞察力。Albert仿真模型的数千次运行创建了大量数据,这些数据描述了仿真输入和输出参数之间的关联/相关性。理解模拟输入和输出参数之间的关联对于理解模拟的复杂现象至关重要。提出了一种分析大规模、高不确定性Albert仿真数据的数据挖掘方法。具体来说,本文描述了一种特征规则发现算法,并将其应用于Albert仿真运行时数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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