Differential privacy in deep learning: Privacy and beyond

Y Wang, Q Wang, L Zhao, C Wang - Future Generation Computer Systems, 2023 - Elsevier
Motivated by the security risks of deep neural networks, such as various membership and
attribute inference attacks, differential privacy has emerged as a promising approach for …

Incorporating prior knowledge in local differentially private data collection for frequency estimation

X Chen, C Wang, J Cui, Q Yang, T Hu… - IEEE Transactions on …, 2022 - ieeexplore.ieee.org
Local differential privacy (LDP) is a prevalent measure of privacy protection as it provides
rigorous privacy guarantees and has been widely studied for statistical analysis, especially …

Matrix gaussian mechanisms for differentially-private learning

J Yang, L Xiang, J Yu, X Wang, B Guo… - IEEE Transactions on …, 2021 - ieeexplore.ieee.org
The wide deployment of machine learning algorithms has become a severe threat to user
data privacy. As the learning data is of high dimensionality and high orders, preserving its …

Breaking the linear error barrier in differentially private graph distance release

C Fan, P Li, X Li - arXiv preprint arXiv:2204.14247, 2022 - arxiv.org
Releasing all pairwise shortest path (APSP) distances between vertices on general graphs
under weight Differential Privacy (DP) is known as a challenging task. In the previous …

Differentially private range query on shortest paths

C Deng, J Gao, J Upadhyay, C Wang - Algorithms and Data Structures …, 2023 - Springer
We consider range queries on a graph under the constraints of differential privacy and query
ranges are defined as the set of edges on the shortest path of the graph. Edges in the graph …

[PDF][PDF] In-Network Approximate and E icient Spatiotemporal Range eries on Moving Objects

G Yang, A Ghosh, L Liang, T Heinis - 2024 - openproceedings.org
Data aggregations enable privacy-aware data analytics for moving objects. A spatiotemporal
range count query is a fundamental query that aggregates the count of objects in a given …

Computational learning theory through a new lens: scalability, uncertainty, practicality, and beyond

C Wang - 2024 - rucore.libraries.rutgers.edu
Computational learning theory studies the design and analysis of learning algorithms, and it
is integral to the foundation of machine learning. In the modern era, classical computational …