Litcius/Paper detail

Membership Inference Attacks on Sequence-to-Sequence Models: Is My Data In Your Machine Translation System?

Sorami Hisamoto, Matt Post, Kevin Duh

2020Transactions of the Association for Computational Linguistics52 citationsDOIOpen Access PDF

Abstract

Data privacy is an important issue for “machine learning as a service” providers. We focus on the problem of membership inference attacks: Given a data sample and black-box access to a model’s API, determine whether the sample existed in the model’s training data. Our contribution is an investigation of this problem in the context of sequence-to-sequence models, which are important in applications such as machine translation and video captioning. We define the membership inference problem for sequence generation, provide an open dataset based on state-of-the-art machine translation models, and report initial results on whether these models leak private information against several kinds of membership inference attacks.

Topics & Concepts

Computer scienceInferenceMachine translationArtificial intelligenceFocus (optics)Context (archaeology)Machine learningSample (material)Sequence (biology)Translation (biology)Training setNatural language processingData miningInformation sensitivityPrivate information retrievalAdversarial Robustness in Machine LearningTopic ModelingNatural Language Processing Techniques