DNVA:网络中多智能体学习可视化分析工具

Sherief Abdallah, Sima Sadleh, Iyad Rahwan, Aamena Al Shamsi, V. Lesser
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引用次数: 1

摘要

网络在我们的现代生活中无处不在,包括互联网、网格、P2P文件共享和传感器网络。因此,人工智能(特别是多智能体系统)的研究人员一直在积极寻求优化这些网络性能的方法。一个有希望但具有挑战性的优化方向是多智能体学习:允许智能体通过相互交互来调整它们的行为。然而,由于大量的系统参数,系统参数变化的并发性,以及参数变化的影响/后果的延迟,理解自适应智能体网络的动态是复杂的。所有这些因素都让我们很难理解为什么一个自适应的智能体网络在某个时候表现得很好,而在另一个时候表现得很差。在本文中,我们提出了一个软件工具,使多智能体系统领域的研究人员能够可视化和分析自适应网络的演变。所提出的软件定制和实现了数据挖掘和社会网络分析研究的技术,并增强了这些技术,以分析本地代理行为。我们使用我们的工具分析两个领域。在这两个领域中,我们都能够使用我们的工具报告和解释有趣的观察结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DNVA: A Tool for Visualizing and Analyzing Multi-agent Learning in Networks
Networks are seen everywhere in our modern life, including the Internet, the Grid, P2P file sharing, and sensor networks. Consequently, researchers in Artificial Intelligence (and Multi-Agent Systems in particular) have been actively seeking methods for optimizing the performance of these networks. A promising yet challenging optimization direction is multi-agent learning: allowing agents to adapt their behavior through interaction with one another. However, understanding the dynamics of an adaptive agent network is complicated due to the large number of system parameters, the concurrency by which the system parameters change, and the delay in the effect/consequence of parameter changes. All these factors make it hard to understand why an adaptive network of agents performed well at some time and poorly at another. In this paper we present a software tool that enables researchers in the multi-agent systems field to visualize and analyze the evolution of adaptive networks. The proposed software customizes and implements techniques from data mining and social network analysis research and augment these techniques in order to analyze local agent behaviors. We use our tool to analyze two domains. In both domains we are able to report and explain interesting observations using our tool.
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