Answering Multi-Dimensional Range Queries under Local Differential Privacy
September 14, 2020 ยท Declared Dead ยท ๐ Proceedings of the VLDB Endowment
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Authors
Jianyu Yang, Tianhao Wang, Ninghui Li, Xiang Cheng, Sen Su
arXiv ID
2009.06538
Category
cs.CR: Cryptography & Security
Cross-listed
cs.DB,
cs.DS
Citations
43
Venue
Proceedings of the VLDB Endowment
Last Checked
3 months ago
Abstract
In this paper, we tackle the problem of answering multi-dimensional range queries under local differential privacy. There are three key technical challenges: capturing the correlations among attributes, avoiding the curse of dimensionality, and dealing with the large domains of attributes. None of the existing approaches satisfactorily deals with all three challenges. Overcoming these three challenges, we first propose an approach called Two-Dimensional Grids (TDG). Its main idea is to carefully use binning to partition the two-dimensional (2-D) domains of all attribute pairs into 2-D grids that can answer all 2-D range queries and then estimate the answer of a higher dimensional range query from the answers of the associated 2-D range queries. However, in order to reduce errors due to noises, coarse granularities are needed for each attribute in 2-D grids, losing fine-grained distribution information for individual attributes. To correct this deficiency, we further propose Hybrid-Dimensional Grids (HDG), which also introduces 1-D grids to capture finer-grained information on distribution of each individual attribute and combines information from 1-D and 2-D grids to answer range queries. To make HDG consistently effective, we provide a guideline for properly choosing granularities of grids based on an analysis of how different sources of errors are impacted by these choices. Extensive experiments conducted on real and synthetic datasets show that HDG can give a significant improvement over the existing approaches.
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