Download PDFOpen PDF in browserPrivacy-Preserving Data Generation Using Randomized Mixing TechniquesEasyChair Preprint 1552412 pages•Date: December 4, 2024AbstractData privacy is a critical concern in modern data-sharing ecosystems. This paper introduces a novel algorithm, RMD-Mix (Randomized Mixing for Differential Privacy), designed to enhance privacy preservation in synthetic dataset generation. By leveraging randomized transformations and controlled perturbation mechanisms, RMD-Mix achieves strong privacy guarantees while retaining high utility for downstream tasks. Extensive experiments on real-world datasets demonstrate the efficacy of RMD-Mix in maintaining privacy and usability, outperforming existing differential privacy-based synthesis methods. Keyphrases: Privacy-Preserving Algorithms, Randomized Mixing, data privacy, dataset synthesis, differential privacy
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