论文标题

书呆子:风险数据流的神经网络

NERD: Neural Network for Edict of Risky Data Streams

论文作者

Passarelli, Sandro, Gündogan, Cem, Stiemert, Lars, Schopp, Matthias, Hillmann, Peter

论文摘要

网络事件可以从简单的连接损失到坚持的攻击都有广泛的原因。一旦确定了潜在的网络安全事件和系统故障,决定如何进行通常很复杂。特别是,如果实际原因无法直接确定。因此,我们开发了网络事件处理支持系统的概念。开发的系统通过多种来源(例如入侵检测系统和监视工具)丰富了信息。它使用二十多个关键属性(例如同步包装比率)来识别潜在的安全事件并将数据分类为不同的优先级类别。之后,该系统使用人工智能来支持进一步的决策过程,并生成相应的报告以简要介绍董事会。源自这些信息,就原因和故障排除措施提出了适当而详细的建议。通过使用标记的流数据作为学习过程的输入,将用户提供有关问题解决方案的反馈。原型表明,决策可以可持续改进,并且网络事件处理过程变得更加有效。

Cyber incidents can have a wide range of cause from a simple connection loss to an insistent attack. Once a potential cyber security incidents and system failures have been identified, deciding how to proceed is often complex. Especially, if the real cause is not directly in detail determinable. Therefore, we developed the concept of a Cyber Incident Handling Support System. The developed system is enriched with information by multiple sources such as intrusion detection systems and monitoring tools. It uses over twenty key attributes like sync-package ratio to identify potential security incidents and to classify the data into different priority categories. Afterwards, the system uses artificial intelligence to support the further decision-making process and to generate corresponding reports to brief the Board of Directors. Originating from this information, appropriate and detailed suggestions are made regarding the causes and troubleshooting measures. Feedback from users regarding the problem solutions are included into future decision-making by using labelled flow data as input for the learning process. The prototype shows that the decision making can be sustainably improved and the Cyber Incident Handling process becomes much more effective.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源