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A reversible data transform algorithm using integer transform for privacy-preserving data mining

机译:一种使用整数变换的可逆数据变换算法,用于保护隐私的数据挖掘

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摘要

In the cloud computing environment, since data owners worry about private information in their data being disclosed without permission, they try to retain the knowledge within the data, while applying privacy-preserving techniques to the data. In the past, a data perturbation approach was commonly used to modify the original data content but it also results in data distortion, and hence leads to significant loss of knowledge within the data. To solve this problem, this study introduced the concept of reversible integer transformation in the image processing domain and developed a Reversible Data Transform (RDT) algorithm that can disrupt and restore data. In the RDT algorithm, using an adjustable weighting mechanism, the degree of data perturbation was adjusted to increase the flexibility of privacy-preserving. In addition, it allows the data to be embedded with a watermark, in order to identify whether the perturbed data has been tampered with. Experimental results show that, compared with the existing algorithms, RDT has better knowledge reservation and is better in terms of effectively reducing information loss and privacy disclosure risk. In addition, it has a high watermark payload.
机译:在云计算环境中,由于数据所有者担心在未经许可的情况下披露其数据中的私人信息,因此他们尝试在将隐私保护技术应用于数据的同时保留数据中的知识。过去,数据扰动方法通常用于修改原始数据内容,但它也会导致数据失真,从而导致数据知识的大量丢失。为了解决这个问题,本研究在图像处理领域引入了可逆整数变换的概念,并开发了可破坏和恢复数据的可逆数据变换(RDT)算法。在RDT算法中,使用可调整的加权机制,调整了数据扰动的程度,以增加隐私保护的灵活性。另外,它允许在数据中嵌入水印,以识别是否已篡改受干扰的数据。实验结果表明,与现有算法相比,RDT具有更好的知识保留能力,在有效减少信息丢失和隐私公开风险方面具有更好的表现。另外,它具有较高的水印有效载荷。

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