DPVisCreator: Incorporating Pattern Constraints to Privacy-preserving Visualizations via Differential Privacy

Data privacy is an essential issue in publishing data visualizations. However, it is challenging to represent multiple data patterns in privacy-preserving visualizations. The prior approaches target specific chart types or perform an anonymization model uniformly without considering the importance o...

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Veröffentlicht in:arXiv.org 2022-08
Hauptverfasser: Zhou, Jiehui, Wang, Xumeng, Wong, Jason K, Wang, Huanliang, Wang, Zhongwei, Yang, Xiaoyu, Yan, Xiaoran, Feng, Haozhe, Qu, Huamin, Haochao Ying, Chen, Wei
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container_title arXiv.org
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creator Zhou, Jiehui
Wang, Xumeng
Wong, Jason K
Wang, Huanliang
Wang, Zhongwei
Yang, Xiaoyu
Yan, Xiaoran
Feng, Haozhe
Qu, Huamin
Haochao Ying
Chen, Wei
description Data privacy is an essential issue in publishing data visualizations. However, it is challenging to represent multiple data patterns in privacy-preserving visualizations. The prior approaches target specific chart types or perform an anonymization model uniformly without considering the importance of data patterns in visualizations. In this paper, we propose a visual analytics approach that facilitates data custodians to generate multiple private charts while maintaining user-preferred patterns. To this end, we introduce pattern constraints to model users' preferences over data patterns in the dataset and incorporate them into the proposed Bayesian network-based Differential Privacy (DP) model PriVis. A prototype system, DPVisCreator, is developed to assist data custodians in implementing our approach. The effectiveness of our approach is demonstrated with quantitative evaluation of pattern utility under the different levels of privacy protection, case studies, and semi-structured expert interviews.
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subjects Bayesian analysis
Computer Science - Human-Computer Interaction
Constraint modelling
Privacy
title DPVisCreator: Incorporating Pattern Constraints to Privacy-preserving Visualizations via Differential Privacy
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