Secure Data Mining in Cloud using Homomorphic Encryption
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Abstract
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 kmeans
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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ME, CSED
