Website-Targeted False Content Injection by Network Operators
February 23, 2016 ยท Declared Dead ยท ๐ USENIX Security Symposium
"No code URL or promise found in abstract"
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Authors
Gabi Nakibly, Jaime Schcolnik, Yossi Rubin
arXiv ID
1602.07128
Category
cs.CR: Cryptography & Security
Citations
28
Venue
USENIX Security Symposium
Last Checked
3 months ago
Abstract
It is known that some network operators inject false content into users' network traffic. Yet all previous works that investigate this practice focus on edge ISPs (Internet Service Providers), namely, those that provide Internet access to end users. Edge ISPs that inject false content affect their customers only. However, in this work we show that not only edge ISPs may inject false content, but also core network operators. These operators can potentially alter the traffic of \emph{all} Internet users who visit predetermined websites. We expose this practice by inspecting a large amount of traffic originating from several networks. Our study is based on the observation that the forged traffic is injected in an out-of-band manner: the network operators do not update the network packets in-path, but rather send the forged packets \emph{without} dropping the legitimate ones. This creates a race between the forged and the legitimate packets as they arrive to the end user. This race can be identified and analyzed. Our analysis shows that the main purpose of content injection is to increase the network operators' revenue by inserting advertisements to websites. Nonetheless, surprisingly, we have also observed numerous cases of injected malicious content. We publish representative samples of the injections to facilitate continued analysis of this practice by the security community.
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