加强对高维数据的保护:带有特征选择的分布式差分隐私

IF 7.4 1区 管理学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS Information Processing & Management Pub Date : 2024-08-27 DOI:10.1016/j.ipm.2024.103870
I Made Putrama , Péter Martinek
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引用次数: 0

摘要

实施数据隐私保护的计算成本往往会随着维度的增加而增加,尤其是在相关数据集上。因此,需要一种更快的数据保护机制来处理高维数据,同时兼顾实用性和隐私性。本研究引入了一个创新框架,利用分布式计算策略提高性能。该框架集成了特定的特征选择算法和分布式互信息计算,这对敏感性评估至关重要。此外,该框架还使用基于贝叶斯优化的超参数调整技术进行优化,该技术的重点是最小化贝叶斯信息准则(BIC)和阿凯克信息准则(AIC)的综合得分,或最小化最大信息系数(MIC)的单独得分。我们在 12 个数据集上对分类和回归任务进行了大量测试,这些数据集包含数万到数千个特征。采用我们的方法,所得数据的敏感度低于其他方法,需要更少的扰动来获得同等水平的隐私。我们使用新颖的隐私偏差系数(PDC)指标来评估原始数据和扰动数据之间的性能差异。总体而言,计算的执行时间大幅缩短了 64.30%,为实际应用提供了宝贵的启示。
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Enhancing protection in high-dimensional data: Distributed differential privacy with feature selection

The computational cost for implementing data privacy protection tends to rise as the dimensions increase, especially on correlated datasets. For this reason, a faster data protection mechanism is needed to handle high-dimensional data while balancing utility and privacy. This study introduces an innovative framework to improve the performance by leveraging distributed computing strategies. The framework integrates specific feature selection algorithms and distributed mutual information computation, which is crucial for sensitivity assessment. Additionally, it is optimized using a hyperparameter tuning technique based on Bayesian optimization, which focuses on minimizing either a combined score of the Bayesian information criterion (BIC) and Akaike’s Information Criterion (AIC) or by minimizing the Maximal Information Coefficient (MIC) score individually. Extensive testing on 12 datasets with tens to thousands of features was conducted for classification and regression tasks. With our method, the sensitivity of the resulting data is lower than alternative approaches, requiring less perturbation for an equivalent level of privacy. Using a novel Privacy Deviation Coefficient (PDC) metric, we assess the performance disparity between original and perturbed data. Overall, there is a significant execution time improvement of 64.30% on the computation, providing valuable insights for practical applications.

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来源期刊
Information Processing & Management
Information Processing & Management 工程技术-计算机:信息系统
CiteScore
17.00
自引率
11.60%
发文量
276
审稿时长
39 days
期刊介绍: Information Processing and Management is dedicated to publishing cutting-edge original research at the convergence of computing and information science. Our scope encompasses theory, methods, and applications across various domains, including advertising, business, health, information science, information technology marketing, and social computing. We aim to cater to the interests of both primary researchers and practitioners by offering an effective platform for the timely dissemination of advanced and topical issues in this interdisciplinary field. The journal places particular emphasis on original research articles, research survey articles, research method articles, and articles addressing critical applications of research. Join us in advancing knowledge and innovation at the intersection of computing and information science.
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