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Dimensionality reduction framework for detecting anomalies from network logs

机译:用于从网络日志中检测异常的降维框架

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摘要

Dynamic web services are vulnerable to a multitude of intrusions that could be previously unknown. Server logs contain vast amounts of information about network traffic, and finding attacks from these logs improves the security of the services. In this research features are extracted from HTTP query parameters using 2-grams. We propose a framework that uses dimensionality reduction and clustering to identify anomalous behavior. The framework detects intrusions from log data gathered from a real network service. This approach is adaptive, works on the application layer and reduces the number of log lines that needs to be inspected. Furthermore, the traffic can be visualized.
机译:动态Web服务易受众多以前未知的入侵的影响。服务器日志包含有关网络流量的大量信息,从这些日志中查找攻击可以提高服务的安全性。在这项研究中,使用2语法从HTTP查询参数中提取功能。我们提出了一个使用降维和聚类来识别异常行为的框架。该框架从从真实网络服务收集的日志数据中检测入侵。这种方法是自适应的,可在应用程序层上使用,并减少了需要检查的日志行数。此外,交通可以被可视化。

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