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Title: | THINKING INSIDE THE BOX: PRIVACY AGAINST STRONGER ADVERSARIES | Authors: | ELDON CHUNG | ORCID iD: | orcid.org/0000-0002-0048-4610 | Keywords: | CRYPTOGRAPHY, EXTRACTORS, RANDOMNESS, MIN-ENTROPY, PRIVACY AMPLIFICATION, SIDE-CHANNELS | Issue Date: | 5-Mar-2024 | Citation: | ELDON CHUNG (2024-03-05). THINKING INSIDE THE BOX: PRIVACY AGAINST STRONGER ADVERSARIES. ScholarBank@NUS Repository. | Abstract: | In this thesis, we study extensions of statistical cryptographic primitives. In particular we study leakage-resilient secret sharing, non-malleable extractors, and immunized ideal one-way functions. The thesis is divided into three main chapters. In the first chapter, we show that 2-out-of-2 leakage resilient (and also non-malleable) secret sharing requires randomness sources that are also extractable. This rules out the possibility of using min-entropic sources. In the second, we introduce collision-resistant seeded extractors and show that any seeded extractor can be made collision resistant at a small overhead in seed length. We then use it to give a two-source non-malleable extractor with entropy rate 0.81 in one source and polylogarithmic in the other. The non-malleable extractor lead to the first statistical privacy amplification protocol against memory tampering adversaries. In the final chapter, we study the hardness of the data structure variant of the $3$SUM problem which is motivated by a recent construction to immunise random oracles against pre-processing adversaries. We give worst-case data structure hardness for the $3$SUM problem matching known barriers in data structures for adaptive adversaries. We also give a slightly stronger lower bound in the case of non-adaptivity. Lastly, we give a novel result in the bit-probe setting. | URI: | https://scholarbank.nus.edu.sg/handle/10635/249491 |
Appears in Collections: | Ph.D Theses (Open) |
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