提高计算机仿真实验设计分析中的数据可解释性

Shengkun Xie, A. Lawniczak, Junlin Hao, Chong Gan
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引用次数: 0

摘要

为了更好地理解数据的行为,对复杂仿真模型生成的数据进行降维是一个重要的方面,在许多研究领域,包括计算机仿真和建模,都经常需要降维。此外,提高数据的可解释性对于研究复杂仿真模型的动力学是非常可取的,其动力学依赖于许多参数,并且已成为机器学习和人工智能的一个重要方面。在这项工作中,我们提出了一种结合主成分分析、K-means聚类和ANOVA-F检验的方法来分析设计的模拟实验的数据。提出了一种新的数据聚类中聚类个数的最优选择方法。通过对基于智能体的计算机仿真的分析,说明了该方法的可行性。我们的研究已经证明了所提出的方法在可解释数据分析和复杂系统分析中的有效性。
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Improving Data Explainability in Analysis of Designed Computer Simulation Experiments
Dimension reduction of data generated from a complex simulation model is an important aspect, for the purpose of better understanding the behaviour of data, and it is often needed in many fields of study, including computer simulation and modelling. Also, improving data explainability is highly desirable for studying dynamics of complex simulation models, dynamics of which depends on many parameters, and has become an important aspect in machine learning and artificial intelligence. In this work, we initiate an approach, combining principal component analysis, K-means clustering and ANOVA-F test, in order to analyze the data from a designed simulation experiment. We propose a new method for optimal selection of numbers of clusters for data clustering. The proposed method is illustrated by an analysis of agent-based computer simulation. Our study has demonstrated the usefulness of the proposed method in both explainable data analytic and analysis of complex systems.
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