Even if new interaction paradigms, such as the Voice over IP (VoIP), are becoming popular and widely adopted, the e-mail is still one of the most utilized ways to communicate across the Internet. However, many malicious threats are conveyed via e-mails. Usually, the authors can exploit two different approaches: i) analyzing the logs produced by e-mail servers or ii) reconstruct the e-mail flows by capturing data directly from the network by placing ad-hoc probes. In this vein, this Chapter discusses the analysis, development and deployment of statistical detection techniques aimed at the detection of Internet worms. For what concerns i), they introduce a tool called Log Mail Analyzer (LMA), which allows to overcome the complexity of inspecting multiple logs created from a heterogeneous population of mail servers. In the perspective of ii) they briefly discuss an alternative solution, based on ad-hoc network probes, to be properly placed to collect traffic and then reconstruct the e-mail flow to be monitored. Lastly, the authors introduce a threshold mechanism, based on a simple statistical framework, to automatically detect and identify different worm activities.
Analysis, Development and Deployment of Statistical Anomaly Detection Techniques for real e-mail Traffic
G Papaleo;D Chiarella;M Aiello;L Caviglione
2011
Abstract
Even if new interaction paradigms, such as the Voice over IP (VoIP), are becoming popular and widely adopted, the e-mail is still one of the most utilized ways to communicate across the Internet. However, many malicious threats are conveyed via e-mails. Usually, the authors can exploit two different approaches: i) analyzing the logs produced by e-mail servers or ii) reconstruct the e-mail flows by capturing data directly from the network by placing ad-hoc probes. In this vein, this Chapter discusses the analysis, development and deployment of statistical detection techniques aimed at the detection of Internet worms. For what concerns i), they introduce a tool called Log Mail Analyzer (LMA), which allows to overcome the complexity of inspecting multiple logs created from a heterogeneous population of mail servers. In the perspective of ii) they briefly discuss an alternative solution, based on ad-hoc network probes, to be properly placed to collect traffic and then reconstruct the e-mail flow to be monitored. Lastly, the authors introduce a threshold mechanism, based on a simple statistical framework, to automatically detect and identify different worm activities.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.