类激活图的可视化以解释网络数据包捕获的AI分类

Igor Cherepanov, Alex Ulmer, Jonathan Geraldi Joewono, J. Kohlhammer
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引用次数: 2

摘要

由于当今网络的快速发展和应用的多样化,互联网流量的分类变得越来越重要。在我们的网络中,连接的数量和新应用程序的添加导致了大量的日志数据,并使专家对常见模式的搜索变得复杂。在特定的应用程序类别中找到这样的模式对于满足网络分析中的各种需求是必要的。监督式深度学习方法从原始数据中学习特征,实现了较高的分类准确率。然而,这些方法非常复杂,并且使用黑盒模型,这削弱了专家对这些分类的信任。此外,将它们作为黑盒使用,即使模型预测的性能很好,也无法从模型预测中获得新的知识。因此,分类的可解释性至关重要。除了增加信任之外,解释还可以用于模型评估,从数据中获得新的见解,并改进模型。在本文中,我们提出了一个可视化和交互式的工具,它将网络数据的分类与解释技术结合起来,形成专家,算法和数据之间的接口。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Visualization Of Class Activation Maps To Explain AI Classification Of Network Packet Captures
The classification of internet traffic has become increasingly important due to the rapid growth of today’s networks and application variety. The number of connections and the addition of new applications in our networks causes a vast amount of log data and complicates the search for common patterns by experts. Finding such patterns among specific classes of applications is necessary to fulfill various requirements in network analytics. Supervised deep learning methods learn features from raw data and achieve high accuracy in classification. However, these methods are very complex and are used as black-box models, which weakens the experts’ trust in these classifications. Moreover, by using them as a black-box, new knowledge cannot be obtained from the model predictions despite their excellent performance. Therefore, the explainability of the classifications is crucial. Besides increasing trust, the explanation can be used for model evaluation to gain new insights from the data and to improve the model. In this paper, we present a visual and interactive tool that combines the classification of network data with an explanation technique to form an interface between experts, algorithms, and data.
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