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Multi-Agent Visualisation Based on Multivariate Data

机译:基于多元数据的多智能体可视化

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摘要

Interesting features of complex agent systems can be captured as multivariate data. There are a number of different approaches to visualizing such data. In this paper, we focus on methods which reduce the dimensions of the data through matrix transformations and then visualise the entities in the lower-dimensional space. We review an approach which describes agent similarities through distances, which are then visualised by multi-dimensional scaling techniques. We point out some shortcomings of this approach and examine an alternative, which applies principal component analysis and subsequent visualisation directly to the data. Our approach is implemented in the Space Explorer tool, which also allows interactive exploration. We identify four categories of data, which capture interaction, profiles, time series, and combinations of these three. Then we consider how to employ them for various agent types such as communicating, mobile, personal, interface, information and collaborating agents. Finally, we examine real-world telecoms data of 90,000 calls with Space Explorer.
机译:复杂代理系统有趣的功能可以捕获为多元数据。有很多不同的方法可以可视化此类数据。在本文中,我们关注于通过矩阵变换来缩小数据维,然后可视化低维空间中的实体的方法。我们回顾了一种通过距离描述代理相似性的方法,然后通过多维缩放技术对其进行可视化。我们指出了这种方法的一些缺点,并研究了一种替代方法,该方法将主成分分析和随后的可视化直接应用于数据。我们的方法是在“空间资源管理器”工具中实现的,该工具还允许交互式探索。我们确定了四类数据,它们捕获了交互,配置文件,时间序列以及这三者的组合。然后,我们考虑如何将它们用于各种代理类型,例如通信,移动,个人,界面,信息和协作代理。最后,我们使用Space Explorer检查了90,000个呼叫的真实电信数据。

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