Abstract
Traditionally, service providers, who want to track the activities of Internet users, rely on explicit tracking techniques like HTTP cookies. From a privacy perspective behavior-based tracking is even more dangerous, because it allows service providers to track users passively, i. e., without cookies. In this case multiple sessions of a user are linked by exploiting characteristic patterns mined from network traffic. In this paper we study the feasibility of behavior-based tracking in a real-world setting, which is unknown so far. In principle, behavior-based tracking can be carried out by any attacker that can observe the activities of users on the Internet. We design and implement a behavior-based tracking technique that consists of a Naive Bayes classifier supported by a cosine similarity decision engine. We evaluate our technique using a large-scale dataset that contains all queries received by a DNS resolver that is used by more than 2100 concurrent users on average per day. Our technique is able to correctly link 88.2 % of the surfing sessions on a day-to-day basis. We also discuss various countermeasures that reduce the effectiveness of our technique. © 2012 IFIP International Federation for Information Processing.
Cite
CITATION STYLE
Banse, C., Herrmann, D., & Federrath, H. (2012). Tracking users on the Internet with behavioral patterns: Evaluation of its practical feasibility. In IFIP Advances in Information and Communication Technology (Vol. 376 AICT, pp. 235–248). https://doi.org/10.1007/978-3-642-30436-1_20
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