Non-Adaptive Cryptanalytic Time-Space Lower Bounds via a Shearer-like Inequality for Permutations
Itai Dinur, Nathan Keller, Avichai Marmor

TL;DR
This paper establishes sharp non-adaptive cryptanalytic lower bounds on time-space tradeoffs for problems like discrete logarithm, highlighting the significant advantage of adaptivity in algorithms.
Contribution
It introduces a new non-adaptive model and employs a Shearer-like inequality for permutations to prove lower bounds, contrasting with adaptive algorithm capabilities.
Findings
Non-adaptive algorithms cannot improve baby-step giant-step time complexity without large advice.
Adaptive algorithms like Pollard's rho can exploit preprocessing for better tradeoffs.
New proof technique using a Shearer-like inequality for permutations is introduced.
Abstract
The power of adaptivity in algorithms has been intensively studied in diverse areas of theoretical computer science. In this paper, we obtain a number of sharp lower bound results which show that adaptivity provides a significant extra power in cryptanalytic time-space tradeoffs with (possibly unlimited) preprocessing time. Most notably, we consider the discrete logarithm (DLOG) problem in a generic group of elements. The classical `baby-step giant-step' algorithm for the problem has time complexity , uses bits of space (up to logarithmic factors in ) and achieves constant success probability. We examine a generalized setting where an algorithm obtains an advice string of bits and is allowed to make arbitrary non-adaptive queries that depend on the advice string (but not on the challenge group element). We show that in this setting, the…
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Taxonomy
TopicsCoding theory and cryptography · graph theory and CDMA systems · Cryptography and Data Security
