2019 5th International Conference on Advanced Computing &Amp; Communication Systems (ICACCS) 2019
DOI: 10.1109/icaccs.2019.8728384
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Privacy Preserving Big Data Publication On Cloud Using Mondrian Anonymization Techniques and Deep Neural Networks

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Cited by 28 publications
(15 citation statements)
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“…9 The computational cost in terms of time complexity for re-encryption with block size 16, 64, 256 and 1024 for file chunking into data node in the cloud with rkey = 256 bit Figure 9 exhibits how the proposed system model behaves when it deals with reencryption for file chunking into the data node in the cloud with rKey of 256 bit size. The interpretation of the outcome of running time (ms) shows that cost of computation for file-chunking is quite lesser in the case of chunk size (16) for the formulated ACM-PPC re-encryption approach on cloud ecosystem, but when the chunk sizes increase from 64 to 1024, then the system yields marginally higher outcome of cost of computation. On average, the file-chunking of the re-encryption model for a block size of 16 provides costefficient performance with an average of 68% over the file chucking by the block size of 64, 256, and 1024.…”
Section: Results and Analysismentioning
confidence: 99%
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“…9 The computational cost in terms of time complexity for re-encryption with block size 16, 64, 256 and 1024 for file chunking into data node in the cloud with rkey = 256 bit Figure 9 exhibits how the proposed system model behaves when it deals with reencryption for file chunking into the data node in the cloud with rKey of 256 bit size. The interpretation of the outcome of running time (ms) shows that cost of computation for file-chunking is quite lesser in the case of chunk size (16) for the formulated ACM-PPC re-encryption approach on cloud ecosystem, but when the chunk sizes increase from 64 to 1024, then the system yields marginally higher outcome of cost of computation. On average, the file-chunking of the re-encryption model for a block size of 16 provides costefficient performance with an average of 68% over the file chucking by the block size of 64, 256, and 1024.…”
Section: Results and Analysismentioning
confidence: 99%
“…The limitation of the data anonymizations on the Bigdata limits its use to balance data privacy and data usability. The authors [16] propose a variance of the anonymization as Mondrian-K anonymity and Deep Neural Network balance a tradeoff between the data utility and security as privacy preservation.…”
Section: Review Of Literaturementioning
confidence: 99%
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“…Despite not being the focus of this work, user-data privacy is a must to support applications and innovation, without jeopardizing individual rights and security [11]. We argue that using appropriate techniques to guarantee user privacy according to the data type is necessary.…”
Section: Data Privacymentioning
confidence: 98%
“…In [169], authors discuss the privacy problem in big data, methods to protect data publishing, evaluate big data (e.g., velocity, volume, variety, variability) from a privacy perspective, and recommendations for future research. In [170], the authors find that existing anonymization techniques fail in the trade-off between data utility and privacy. They propose a Mondrian based k-anonymity approach combined with a Deep Neural Network-based framework.…”
Section: Data Privacymentioning
confidence: 99%