Volume 10 - Issue 1
BAdASS: Preserving Privacy in Behavioural Advertising with Applied Secret Sharing
- Leon J. Helsloot
Cyber Security Group, Delft University of Technology, Delft, The Netherlands
leonhelsloot@gmail.com
- Gamze Tillem
Cyber Security Group, Delft University of Technology, Delft, The Netherlands
g.tillem@tudelft.nl
- Zekeriya Erkin
Cyber Security Group, Delft University of Technology, Delft, The Netherlands
z.erkin@tudelft.nl
Keywords: Behavioural advertising, Machine learning, Secret sharing, Privacy, Cryptography
Abstract
Online advertising is a multi-billion dollar industry, forming the primary source of income for many
publishers offering free web content. Serving advertisements tailored to users’ interests greatly
improves the effectiveness of advertisements, and is believed to be beneficial to publishers and users
alike. The privacy of users, however, is threatened by the widespread collection of data that is required
for behavioural advertising. In this paper, we present BAdASS, a novel privacy-preserving protocol
for Online Behavioural Advertising that achieves significant performance improvements over the
state-of-the-art without disclosing any information about user interests to any party. BAdASS ensures
user privacy by processing data within the secret-shared domain, using the heavily fragmented shape
of the online advertising landscape to its advantage and combining efficient secret-sharing techniques
with a machine learning method commonly encountered in existing advertising systems. Our protocol
serves advertisements within a fraction of a second, based on highly detailed user profiles and widely
used machine learning methods.