差异化私人方框图

Kelly Ramsay, Jairo Diaz-Rodriguez
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引用次数: 0

摘要

尽管差异化隐私数据可视化在协调数据分析和隐私方面具有潜力,但这一领域的研究仍相对落后。方框图是一种广泛流行的可视化方法,用于总结数据集和比较多个数据集。因此,我们引入了一种差异化隐私方框图。我们评估了它在显示给定经验分布的位置、规模、倾斜度和尾部方面的有效性。在理论阐述中,我们表明方框图的位置和规模是以最佳样本复杂度估算的,而倾斜度和尾部是一致估算的。在仿真中,我们发现这个箱形图的表现与非私有箱形图类似,而且优于根据现有的差异私有量化算法天真地构建的箱形图。此外,我们还对 Airbnb 房源进行了真实数据分析,结果表明,通过差异化私有盒图可视化技术也能实现类似的分析。
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Differentially Private Boxplots
Despite the potential of differentially private data visualization to harmonize data analysis and privacy, research in this area remains relatively underdeveloped. Boxplots are a widely popular visualization used for summarizing a dataset and for comparison of multiple datasets. Consequentially, we introduce a differentially private boxplot. We evaluate its effectiveness for displaying location, scale, skewness and tails of a given empirical distribution. In our theoretical exposition, we show that the location and scale of the boxplot are estimated with optimal sample complexity, and the skewness and tails are estimated consistently. In simulations, we show that this boxplot performs similarly to a non-private boxplot, and it outperforms a boxplot naively constructed from existing differentially private quantile algorithms. Additionally, we conduct a real data analysis of Airbnb listings, which shows that comparable analysis can be achieved through differentially private boxplot visualization.
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