使用同态加密的云数据安全挖掘

D. Mittal, Damandeep Kaur, A. Aggarwal
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引用次数: 32

摘要

随着科技、工业、电子商务和研究的进步,大量复杂而无处不在的数字数据正在产生,这些数据正以指数级的速度增长,通常被称为大数据。传统的数据存储系统无法处理大数据,对大数据的分析也成为一个挑战,传统的分析工具无法处理大数据。云计算将大数据分布在云上,可以解决大数据的处理、存储和分析问题。毫无疑问,云计算是解决大数据存储及其分析问题的最佳答案,但话虽如此,云计算中大数据存储的安全始终存在潜在风险,这需要解决。数据隐私是在云环境中存储大数据的主要问题之一。基于数据挖掘的攻击是对数据的主要威胁,它允许攻击者或未经授权的用户通过分析对原始数据执行的计算生成的结果来推断有价值和敏感的信息。本文提出了一种安全的k-均值数据挖掘方法,假设数据分布在不同的主机之间,保持数据的隐私性。该方法能够保持现有k-means的正确性和有效性,即使在分布式环境下也能生成最终结果。
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Secure Data Mining in Cloud Using Homomorphic Encryption
With the advancement in technology, industry, e-commerce and research a large amount of complex and pervasive digital data is being generated which is increasing at an exponential rate and often termed as big data. Traditional Data Storage systems are not able to handle Big Data and also analyzing the Big Data becomes a challenge and thus it cannot be handled by traditional analytic tools. Cloud Computing can resolve the problem of handling, storage and analyzing the Big Data as it distributes the big data within the cloudlets. No doubt, Cloud Computing is the best answer available to the problem of Big Data storage and its analyses but having said that, there is always a potential risk to the security of Big Data storage in Cloud Computing, which needs to be addressed. Data Privacy is one of the major issues while storing the Big Data in a Cloud environment. Data Mining based attacks, a major threat to the data, allows an adversary or an unauthorized user to infer valuable and sensitive information by analyzing the results generated from computation performed on the raw data. This thesis proposes a secure k-means data mining approach assuming the data to be distributed among different hosts preserving the privacy of the data. The approach is able to maintain the correctness and validity of the existing k-means to generate the final results even in the distributed environment.
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