Authors introduce MLM and CLM specialization methods that avoid memorizing identifiers in sensitive training data while aiming for a privacy-utility tradeoff on medical datasets.
The Secret Sharer: Evaluating and Testing Unintended Memorization in Neural Networks
2 Pith papers cite this work. Polarity classification is still indexing.
abstract
This paper describes a testing methodology for quantitatively assessing the risk that rare or unique training-data sequences are unintentionally memorized by generative sequence models---a common type of machine-learning model. Because such models are sometimes trained on sensitive data (e.g., the text of users' private messages), this methodology can benefit privacy by allowing deep-learning practitioners to select means of training that minimize such memorization. In experiments, we show that unintended memorization is a persistent, hard-to-avoid issue that can have serious consequences. Specifically, for models trained without consideration of memorization, we describe new, efficient procedures that can extract unique, secret sequences, such as credit card numbers. We show that our testing strategy is a practical and easy-to-use first line of defense, e.g., by describing its application to quantitatively limit data exposure in Google's Smart Compose, a commercial text-completion neural network trained on millions of users' email messages.
verdicts
UNVERDICTED 2representative citing papers
The paper outlines the impact of FACTS issues on technology-assisted sensitivity review for government documents and identifies areas for future research.
citing papers explorer
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Towards the Anonymization of the Language Modeling
Authors introduce MLM and CLM specialization methods that avoid memorizing identifiers in sensitive training data while aiming for a privacy-utility tradeoff on medical datasets.
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The FACTS of Technology-Assisted Sensitivity Review
The paper outlines the impact of FACTS issues on technology-assisted sensitivity review for government documents and identifies areas for future research.