Detection of Botnet Command and Control Traffic by the Multistage Trust Evaluation of Destination Identifiers
نویسندگان
چکیده
Network-based detection of botnet Command and Control communication is a difficult task if the traffic has a relatively low volume and if popular protocols, such as HTTP, are used to resemble normal traffic. We present a new network-based detection approach that is capable of detecting this type of Command and Control traffic in an enterprise network by estimating the trustworthiness of the traffic destinations. If the destination identifier of a traffic flow origins directly from: human input, prior traffic from a trusted destination, or a defined set of legitimate applications, the destination is trusted and its associated traffic is classified as normal. Advantages of this approach are: the ability of zero day malicious traffic detection, low exposure to malware by passive host-external traffic monitoring, and the applicability for real-time filtering. Experimental evaluation demonstrates successful detection of diverse types of Command and Control Traffic.
منابع مشابه
BotOnus: an online unsupervised method for Botnet detection
Botnets are recognized as one of the most dangerous threats to the Internet infrastructure. They are used for malicious activities such as launching distributed denial of service attacks, sending spam, and leaking personal information. Existing botnet detection methods produce a number of good ideas, but they are far from complete yet, since most of them cannot detect botnets in an early stage ...
متن کاملExploiting Temporal Persistence to Detect Covert Botnet Channels
We describe a method to detect botnet command and control traffic and individual end-hosts. We introduce the notion of ”destination traffic atoms” which aggregate the destinations and services that are communicated with. We then compute the ”persistence”, which is a measure of temporal regularity and that we propose in this paper, for individual destination atoms. Very persistent destination at...
متن کاملDetection of Covert Botnet Command and Control Channels by Causal Analysis of Traffic Flows
The Command and Control communication of a botnet is evolving into sophisticated covert communication. Techniques as encryption, steganography, and recently the use of social network websites as a proxy, impede conventional detection of botnet communication. In this paper we propose detection of covert communication by passive hostexternal analysis of causal relationships between traffic flows ...
متن کاملTowards Detection of Botnet Communication through Social Media by Monitoring User Activity
A new generation of botnets abuses popular social media like Twitter, Facebook, and Youtube as Command and Control channel. This challenges the detection of Command and Control traffic, because traditional IDS approaches, based on statistical flow anomalies, protocol anomalies, payload signatures, and server blacklists, do not work in this case. In this paper we introduce a new detection mechan...
متن کاملA Novel Botnet Detection Based on IP Flows and Time Intervals
Botnet detection is one of the most emerging topic recently. In this article we would like to introduce a novel method based on IP flows to detect botnets through command and control behaviors. This is a combination of both machine learning and regression, which can reduce time interval to monitor network traffic significantly.
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
- ICST Trans. Security Safety
دوره 2 شماره
صفحات -
تاریخ انتشار 2015