Adaptive Extractors and their Application to Leakage Resilient Secret Sharing

Abstract

We introduce Adaptive Extractors, which, unlike traditional randomness extractors, guarantee security even when an adversary obtains leakage on the source after observing the extractor output. We make a compelling case for the study of such extractors by demonstrating their use in obtaining adaptive leakage in secret sharing schemes. Specifically, at FOCS 2020, Chattopadhyay, Goodman, Goyal, Kumar, Li, Meka, Zuckerman, built an adaptively secure leakage resilient secret sharing scheme (LRSS) with both rate and leakage rate being O(1/n)O(1/n), where nn is the number of parties. In this work, we build an adaptively secure LRSS that offers an interesting trade-off between rate, leakage rate, and the total number of shares from which an adversary can obtain leakage. As a special case, when considering tt-out-of-nn secret sharing schemes for threshold t=cnt = cn (constant 0<c<10<c<1), we build a scheme with a constant rate, constant leakage rate, and allow the adversary leakage from all but t1t-1 of the shares, while giving her the remaining t1t-1 shares completely in the clear. (Prior to this, constant rate LRSS scheme tolerating adaptive leakage was unknown for any threshold.) Finally, we show applications of our techniques to both non-malleable secret sharing and secure message transmission

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