Visible to the public Dynamic Data Publishing with Differential Privacy via Reinforcement Learning

TitleDynamic Data Publishing with Differential Privacy via Reinforcement Learning
Publication TypeConference Paper
Year of Publication2019
AuthorsGao, Ruichao, Ma, Xuebin
Conference Name2019 IEEE 43rd Annual Computer Software and Applications Conference (COMPSAC)
Keywordscomposability, data privacy, data publishing, data release, Differential privacy, dynamic data, dynamic data publishing algorithm, dynamic data publishing strategy, Heuristic algorithms, Human Behavior, learning (artificial intelligence), privacy, privacy budget, privacy budget allocation phase, privacy budget allocation scheme, privacy guarantee, privacy protection, pubcrawl, Publishing, reinforcement learning, Resiliency, resource allocation, Resource management, Scalability
AbstractDifferential privacy, which is due to its rigorous mathematical proof and strong privacy guarantee, has become a standard for the release of statistics with privacy protection. Recently, a lot of dynamic data publishing algorithms based on differential privacy have been proposed, but most of the algorithms use a native method to allocate the privacy budget. That is, the limited privacy budget is allocated to each time point uniformly, which may result in the privacy budget being unreasonably utilized and reducing the utility of data. In order to make full use of the limited privacy budget in the dynamic data publishing and improve the utility of data publishing, we propose a dynamic data publishing algorithm based on reinforcement learning in this paper. The algorithm consists of two parts: privacy budget allocation and data release. In the privacy budget allocation phase, we combine the idea of reinforcement learning and the changing characteristics of dynamic data, and establish a reinforcement learning model for the allocation of privacy budget. Finally, the algorithm finds a reasonable privacy budget allocation scheme to publish dynamic data. In the data release phase, we also propose a new dynamic data publishing strategy to publish data after the privacy budget is exhausted. Extensive experiments on real datasets demonstrate that our algorithm can allocate the privacy budget reasonably and improve the utility of dynamic data publishing.
DOI10.1109/COMPSAC.2019.00111
Citation Keygao_dynamic_2019