IEEE Access (Jan 2021)

Explainable Machine Learning for Default Privacy Setting Prediction

  • Sascha Lobner,
  • Welderufael B. Tesfay,
  • Toru Nakamura,
  • Sebastian Pape

DOI
https://doi.org/10.1109/ACCESS.2021.3074676
Journal volume & issue
Vol. 9
pp. 63700 – 63717

Abstract

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When requesting a web-based service, users often fail in setting the website’s privacy settings according to their self privacy preferences. Being overwhelmed by the choice of preferences, a lack of knowledge of related technologies or unawareness of the own privacy preferences are just some reasons why users tend to struggle. To address all these problems, privacy setting prediction tools are particularly well-suited. Such tools aim to lower the burden to set privacy preferences according to owners’ privacy preferences. To be in line with the increased demand for explainability and interpretability by regulatory obligations – such as the General Data Protection Regulation (GDPR) in Europe – in this paper an explainable model for default privacy setting prediction is introduced. Compared to the previous work we present an improved feature selection, increased interpretability of each step in model design and enhanced evaluation metrics to better identify weaknesses in the model’s design before it goes into production. As a result, we aim to provide an explainable and transparent tool for default privacy setting prediction which users easily understand and are therefore more likely to use.

Keywords