dpUGC: Learn differentially private representation for user generated contents
conference contribution
posted on 2023-05-23, 14:36authored byVu, X-S, Son TranSon Tran, Jiang, L
This paper firstly proposes a simple yet efficient generalized approach to apply differential privacy to text representation (i.e., word embedding). Based on it, we propose a user-level approach to learn personalized differentially private word embedding model on user generated contents (UGC). To our best knowledge, this is the first work of learning user-level differentially private word embedding model from text for sharing. The proposed approaches protect the privacy of the individual from re-identification, especially provide better trade-off of privacy and data utility on UGC data for sharing. The experimental results show that the trained embedding models are applicable for the classic text analysis tasks (e.g., regression). Moreover, the proposed approaches of learning difierentially private embedding models are both framework- and dataindependent, which facilitates the deployment and sharing. The source code is available at https://github.com/sonvx/dpText.
History
Publication title
Proceedings of the 20th International Conference on Computational Linguistics and Intelligent Text Processing
Pagination
1-16
Department/School
School of Information and Communication Technology
Publisher
Springer
Place of publication
New York, United States
Event title
20th International Conference on Computational Linguistics and Intelligent Text Processing
Event Venue
La Rochelle, France
Date of Event (Start Date)
2019-04-07
Date of Event (End Date)
2019-04-13
Rights statement
Copyright unknown
Socio-economic Objectives
Information systems, technologies and services not elsewhere classified