Skip to yearly menu bar Skip to main content


Poster

Privacy-Preserving Classification of Personal Text Messages with Secure Multi-Party Computation

Devin Reich · Ariel Todoki · Rafael Dowsley · Martine De Cock · Anderson Nascimento

East Exhibition Hall B + C #96

Keywords: [ Algorithms -> Boosting and Ensemble Methods; Algorithms -> Classification; Applications ] [ Natural Language Processing ] [ Privacy, Anonymity, and Security ] [ Applications ]


Abstract:

Classification of personal text messages has many useful applications in surveillance, e-commerce, and mental health care, to name a few. Giving applications access to personal texts can easily lead to (un)intentional privacy violations. We propose the first privacy-preserving solution for text classification that is provably secure. Our method, which is based on Secure Multiparty Computation (SMC), encompasses both feature extraction from texts, and subsequent classification with logistic regression and tree ensembles. We prove that when using our secure text classification method, the application does not learn anything about the text, and the author of the text does not learn anything about the text classification model used by the application beyond what is given by the classification result itself. We perform end-to-end experiments with an application for detecting hate speech against women and immigrants, demonstrating excellent runtime results without loss of accuracy.

Live content is unavailable. Log in and register to view live content