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Privacy in Cloud Computing through Immersion-based Coding: Conclusion and Referencesby@computational
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Privacy in Cloud Computing through Immersion-based Coding: Conclusion and References

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A framework for privacy-preserving cloud computing, combining differential privacy and system immersion to secure data without sacrificing utility.
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Authors:

(1) Haleh Hayati, Department of Mechanical Engineering, Dynamics and Control Group, Eindhoven University of Technology, The Netherlands;

(2) Nathan van de Wouw, Department of Mechanical Engineering, Dynamics and Control Group, Eindhoven University of Technology, The Netherlands;

(3) Carlos Murguia, Department of Mechanical Engineering, Dynamics and Control Group, Eindhoven University of Technology, The Netherlands, and with the School of Electrical Engineering and Robotics, Queensland University of Technology, Brisbane, Australia.

Abstract and Introduction

Problem Formulation

Affine Solution to Problem 1

Privacy Guarantee

General Guidelines for Implementation

Case Studies

Conclusion and References

VII. CONCLUSION

In this paper, we have developed a privacy-preserving framework for the implementation of remote dynamical algorithms in the cloud. It is built on the synergy of random coding and system immersion tools from control theory to protect private information. We have devised a synthesis procedure to design the dynamics of a coding scheme for privacy and a higher-dimensional system called target algorithm such that trajectories of the standard dynamical algorithm are immersed/embedded in its trajectories, and it operates on randomly encoded higher-dimensional data. Random coding was formulated at the user side as a random change of coordinates that maps original private data to a higher-dimensional space. Such coding enforces that the target algorithm produces an encoded higher-dimensional version of the utility of the original algorithm that can be decoded on the user side.


The proposed immersion-based coding scheme provides the same utility as the original algorithm (i.e., when no coding is employed to protect against data inference), (practically) reveals no information about private data, can be applied to large-scale algorithms, is computationally efficient, and offers any desired level of differential privacy without degrading the algorithm utility.

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This paper is available on arxiv under CC BY 4.0 DEED license.