Var-CNN: A Data-Efficient Website Fingerprinting Attack Based on Deep Learning

Author:

Bhat Sanjit1,Lu David1,Kwon Albert2,Devadas Srinivas2

Affiliation:

1. MIT PRIMES

2. MIT

Abstract

Abstract In recent years, there have been several works that use website fingerprinting techniques to enable a local adversary to determine which website a Tor user visits. While the current state-of-the-art attack, which uses deep learning, outperforms prior art with medium to large amounts of data, it attains marginal to no accuracy improvements when both use small amounts of training data. In this work, we propose Var-CNN, a website fingerprinting attack that leverages deep learning techniques along with novel insights specific to packet sequence classification. In open-world settings with large amounts of data, Var-CNN attains over 1% higher true positive rate (TPR) than state-of-the-art attacks while achieving 4× lower false positive rate (FPR). Var-CNN’s improvements are especially notable in low-data scenarios, where it reduces the FPR of prior art by 3.12% while increasing the TPR by 13%. Overall, insights used to develop Var-CNN can be applied to future deep learning based attacks, and substantially reduce the amount of training data needed to perform a successful website fingerprinting attack. This shortens the time needed for data collection and lowers the likelihood of having data staleness issues.

Publisher

Walter de Gruyter GmbH

Subject

General Medicine

Reference48 articles.

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3. [3] Kota Abe and Shigeki Goto. Fingerprinting Attack on Tor Anonymity using Deep Learning. In Proceedings of the Asia-Pacific Advanced Network Research Workshop, volume 42, pages 15–20, 2016.

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5. [5] Xiang Cai, Rishab Nithyanand, Tao Wang, Rob Johnson, and Ian Goldberg. A Systematic Approach to Developing and Evaluating Website Fingerprinting Defenses. In Proceedings of the ACM Conference on Computer and Communications Security, pages 227–238, 2014.10.1145/2660267.2660362

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