GANDaLF: GAN for Data-Limited Fingerprinting

Author:

Oh Se Eun1,Mathews Nate2,Rahman Mohammad Saidur2,Wright Matthew2,Hopper Nicholas1

Affiliation:

1. University of Minnesota

2. Rochester Institute of Technology

Abstract

Abstract We introduce Generative Adversarial Networks for Data-Limited Fingerprinting (GANDaLF), a new deep-learning-based technique to perform Website Fingerprinting (WF) on Tor traffic. In contrast to most earlier work on deep-learning for WF, GANDaLF is intended to work with few training samples, and achieves this goal through the use of a Generative Adversarial Network to generate a large set of “fake” data that helps to train a deep neural network in distinguishing between classes of actual training data. We evaluate GANDaLF in low-data scenarios including as few as 10 training instances per site, and in multiple settings, including fingerprinting of website index pages and fingerprinting of non-index pages within a site. GANDaLF achieves closed-world accuracy of 87% with just 20 instances per site (and 100 sites) in standard WF settings. In particular, GANDaLF can outperform Var-CNN and Triplet Fingerprinting (TF) across all settings in subpage fingerprinting. For example, GANDaLF outperforms TF by a 29% margin and Var-CNN by 38% for training sets using 20 instances per site.

Publisher

Walter de Gruyter GmbH

Subject

General Medicine

Reference31 articles.

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3. [3] Tor browser crawler. https://github.com/webfp/tor-browser-crawler.

4. [4] S. Bhat, D. Lu, A. Kwon, and S. Devadas. Var-CNN: A data-efficient website fingerprinting attack based on deep learning. Proceedings on Privacy Enhancing Technologies, 2019(4):292–310, 2019.

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