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Foundations of Differentially Oblivious Algorithms

Publication ,  Journal Article
Chan, THH; Chung, KM; Maggs, B; Shi, E
Published in: Journal of the ACM
August 26, 2022

It is well-known that a program's memory access pattern can leak information about its input. To thwart such leakage, most existing works adopt the technique of oblivious RAM (ORAM) simulation. Such an obliviousness notion has stimulated much debate. Although ORAM techniques have significantly improved over the past few years, the concrete overheads are arguably still undesirable for real-world systems - part of this overhead is in fact inherent due to a well-known logarithmic ORAM lower bound by Goldreich and Ostrovsky. To make matters worse, when the program's runtime or output length depend on secret inputs, it may be necessary to perform worst-case padding to achieve full obliviousness and thus incur possibly super-linear overheads. Inspired by the elegant notion of differential privacy, we initiate the study of a new notion of access pattern privacy, which we call "(ϵ, δ) -differential obliviousness". We separate the notion of (ϵ, δ) -differential obliviousness from classical obliviousness by considering several fundamental algorithmic abstractions including sorting small-length keys, merging two sorted lists, and range query data structures (akin to binary search trees). We show that by adopting differential obliviousness with reasonable choices of ϵand δ, not only can one circumvent several impossibilities pertaining to full obliviousness, one can also, in several cases, obtain meaningful privacy with little overhead relative to the non-private baselines (i.e., having privacy "with little extra overhead"). On the other hand, we show that for very demanding choices of ϵand δ, the same lower bounds for oblivious algorithms would be preserved for (ϵ, δ) -differential obliviousness.

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Published In

Journal of the ACM

DOI

EISSN

1557-735X

ISSN

0004-5411

Publication Date

August 26, 2022

Volume

69

Issue

4

Related Subject Headings

  • Computation Theory & Mathematics
  • 46 Information and computing sciences
  • 08 Information and Computing Sciences
 

Citation

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ICMJE
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Chan, T. H. H., Chung, K. M., Maggs, B., & Shi, E. (2022). Foundations of Differentially Oblivious Algorithms. Journal of the ACM, 69(4). https://doi.org/10.1145/3555984
Chan, T. H. H., K. M. Chung, B. Maggs, and E. Shi. “Foundations of Differentially Oblivious Algorithms.” Journal of the ACM 69, no. 4 (August 26, 2022). https://doi.org/10.1145/3555984.
Chan THH, Chung KM, Maggs B, Shi E. Foundations of Differentially Oblivious Algorithms. Journal of the ACM. 2022 Aug 26;69(4).
Chan, T. H. H., et al. “Foundations of Differentially Oblivious Algorithms.” Journal of the ACM, vol. 69, no. 4, Aug. 2022. Scopus, doi:10.1145/3555984.
Chan THH, Chung KM, Maggs B, Shi E. Foundations of Differentially Oblivious Algorithms. Journal of the ACM. 2022 Aug 26;69(4).

Published In

Journal of the ACM

DOI

EISSN

1557-735X

ISSN

0004-5411

Publication Date

August 26, 2022

Volume

69

Issue

4

Related Subject Headings

  • Computation Theory & Mathematics
  • 46 Information and computing sciences
  • 08 Information and Computing Sciences