Privacy Preserving and Efficient Outsourcing Algorithm to Public Cloud: A Case of Statistical Analysis
The growth of the cloud computing services and its proliferation in business and academia has triggered enormous opportunities for computation in third-party data management settings. This computing model allows the client to outsource their large computations to cloud data centers, where the cloud server conducts the computation on their behalf. But data privacy and computational integrity are the biggest concern for the client. In this article, the authors attempt to present an algorithm for secure outsourcing of a covariance matrix, which is the basic building block for many automatic classification systems. The algorithm first performs some efficient transformation to protect the privacy and verify the computed result produced by the cloud server. Further, an analytical and experimental analysis shows that the algorithm is simultaneously meeting the design goals of privacy, verifiability and efficiency. Also, found that the proposed algorithm is about 7.8276 times more efficient than the direct implementation.
Year of publication: |
2018
|
---|---|
Authors: | Kumar, Malay ; Vardhan, Manu |
Published in: |
International Journal of Information Security and Privacy (IJISP). - IGI Global, ISSN 1930-1669, ZDB-ID 2400983-0. - Vol. 12.2018, 2 (01.04.), p. 1-25
|
Publisher: |
IGI Global |
Subject: | Cloud Computing | Covariance Matrix | Mean | Secure Computation | Statistical Analysis |
Saved in:
Saved in favorites
Similar items by subject
-
THE ROLE OF INFORMATION SHARING IN SUPPLY CHAIN MANAGEMENT: THE SECURESCM APPROACH
DAMIANI, ERNESTO, (2011)
-
Exact arbitrage and portfolio analysis in large asset markets
Khan, M. Ali, (2002)
-
Market Integration Dynamics and Asymptotic Price Convergence in Distribution
GarcĂa-Hiernaux, Alfredo, (2013)
- More ...