首页> 外文会议>Annual research conference of the South African Institute of Computer Scientists and Information Technologists 2010 >Data Classification for Artificial Intelligence Construct Training to Aid in Network Incident Identification Using Network Telescope Data
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Data Classification for Artificial Intelligence Construct Training to Aid in Network Incident Identification Using Network Telescope Data

机译:利用网络望远镜数据进行人工智能构造训练以帮助识别网络事件的数据分类

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This paper considers the complexities involved in obtaining training data for use by artificial intelligence constructs to identify potential network incidents using passive network telescope data. While a large amount of data obtained from network telescopes exists, this data is not currently marked for known incidents. Problems related to this marking process include the accuracy of the markings, the validity of the original data and the time involved. In an attempt to solve these issues two methods of training data generation are considered namely; manual identification and automated generation. The manual technique considers heuristics for finding network incidents while the automated technique considers building simulated data sets using existing models of virus propagation and malicious activity. An example artificial intelligence system is then constructed using these marked datasets.
机译:本文考虑了获取训练数据以供人工智能构造使用被动网络望远镜数据识别潜在网络事件所涉及的复杂性。尽管存在从网络望远镜获得的大量数据,但当前并未将该数据标记为已知事件。与该标记过程有关的问题包括标记的准确性,原始数据的有效性和所涉及的时间。为了解决这些问题,考虑了两种训练数据生成的方法:手动识别和自动生成。手动技术考虑了用于发现网络事件的启发式方法,而自动化技术则考虑了使用病毒传播和恶意活动的现有模型来构建模拟数据集。然后,使用这些标记的数据集构建示例人工智能系统。

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