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Privacy Preserving BIRCH Algorithm under Differential Privacy

机译:隐私保留跨差别隐私下的桦木算法

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Current hierarchical clustering algorithms face the risk of privacy leakage during the clustering process for big dataset. While differential privacy is a relatively recent development in the field of privacy-preserving data mining, offering more robust privacy guarantees. In the paper, BIRCH algorithm under differential privacy is studied and analyzed. Firstly, Diff-BIRCH algorithm which directly add Laplace noise to the dataset before clustering is proposed. Though Diff-BIRCH algorithm achieves privacy protection, clustering result turns to be less available. Since cluster information such as cluster diameter or cluster distance may disclose during clustering process in BIRCH, three improved BIRCH algorithms under differential privacy are then designed aiming at avoiding leakage of the cluster information. Finally, experiment results validate the effectiveness and applicability of the proposed algorithms under the premise of meeting privacy budget.
机译:当前的分层聚类算法面临大型数据集的聚类过程中隐私泄漏的风险。虽然差异隐私是隐私保留数据挖掘领域的相对较近的发展,但提供了更强大的隐私保障。在本文中,研究并分析了差分隐私下的桦木算法。首先,在提出群集之前直接将LAPLACE噪声直接添加LAPLACE噪声的差异桦木算法。虽然Diff-Birch算法实现了隐私保护,但群集结果变得更少。由于诸如集群直径或群集距离的聚类信息可以在桦树聚类过程中公开,因此在差分隐私下的三种改进的桦木算法被设计为旨在避免群集信息的泄漏。最后,实验结果验证了所提出的算法在会议隐私预算的前提下的有效性和适用性。

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