Litcius/Paper detail

GANDaLF: GAN for Data-Limited Fingerprinting

Se Eun Oh, Nate Mathews, Mohammad Saidur Rahman, Matthew Wright, Nicholas Hopper

2021Proceedings on Privacy Enhancing Technologies48 citationsDOIOpen Access PDF

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.

Topics & Concepts

Computer scienceMargin (machine learning)Generative adversarial networkArtificial intelligenceSet (abstract data type)Training setGenerative grammarDeep learningData setPattern recognition (psychology)Machine learningProgramming languageInternet Traffic Analysis and Secure E-votingHate Speech and Cyberbullying DetectionAdvanced Steganography and Watermarking Techniques