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User-Entity Differential Privacy in Learning Natural Language Models

User-entity differential privacy (UeDP) provides formal privacy protection for both sensitive entities and data owners, with a novel algorithm optimizing privacy loss and model utility.

Year
2022
Venue
user-entity-differential-privacy-in-learning
Authors
7
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arxiv.org/abs/2211.01141v2ARXIV-DEFAULT
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Abstract

In this paper, we introduce a novel concept of user-entity differential privacy (UeDP) to provide formal privacy protection simultaneously to both sensitive entities in textual data and data owners in learning natural language models (NLMs). To preserve UeDP, we developed a novel algorithm, called UeDP-Alg, optimizing the trade-off between privacy loss and model utility with a tight sensitivity bound derived from seamlessly combining user and sensitive entity sampling processes. An extensive theoretical analysis and evaluation show that our UeDP-Alg outperforms baseline approaches in model utility under the same privacy budget consumption on several NLM tasks, using benchmark datasets.

Authors

7