The use of data combined with tailored statistical analysis has presented a unique opportunity to organizations in diverse fields to observe users' behaviors and needs, and accordingly adapt and fine-tune their services. However, in order to offer utilizable, plausible, and personalized alternatives to users, this process usually also entails a breach of their privacy. The use of statistical databases for releasing data analytics is growing exponentially, and while many cryptographic methods are utilized to protect the confidentiality of the data-a task that has been ably carried out by many authors over the years-only a few %rudimentary number of works focus on the problem of privatizing the actual databases. Believing that securing and privatizing databases are two equilateral problems, in this paper, we propose a hybrid approach by combining Functional Encryption with the principles of Differential Privacy. Our main goal is not only to design a scheme for processing statistical data and releasing statistics in a privacy-preserving way but also to provide a richer, more balanced, and comprehensive approach in which data analytics and cryptography go hand in hand with a shift towards increased privacy.
CITATION STYLE
Bakas, A., Michalas, A., & Dimitriou, T. (2022). Private Lives Matter: A Differential Private Functional Encryption Scheme. In CODASPY 2022 - Proceedings of the 12th ACM Conference on Data and Application Security and Privacy (pp. 300–311). Association for Computing Machinery, Inc. https://doi.org/10.1145/3508398.3511514
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