학술논문

Behavior-based tracking of Internet users with semi-supervised learning
Document Type
Conference
Source
2016 14th Annual Conference on Privacy, Security and Trust (PST) Privacy, Security and Trust (PST), 2016 14th Annual Conference on. :596-599 Dec, 2016
Subject
Communication, Networking and Broadcast Technologies
Computing and Processing
Engineering Profession
Observers
Training
IP networks
Internet
Servers
Robustness
Privacy
Language
Abstract
Behavior-based tracking is an unobtrusive technique that allows observers on the Internet to monitor user activities over long periods of time - in spite of changing IP addresses. Our technique uses semi-supervised machine learning, which allows observers to track users without the need for multiple labeled training sessions. We present evaluation results obtained on a realistic dataset that contains the DNS traffic of 3,800 users. Given the traffic of one week, our simulated observers can link the sessions of up to 87% of the users with surprisingly little effort. Our results indicate that observers can leverage unlabeled sessions to increase the robustness of existing tracking techniques. This makes it more difficult for users to protect their privacy on the Internet.