Randomness Extraction in AC0 and with Small Locality
Kuan Cheng, Xin Li

TL;DR
This paper constructs improved randomness extractors within constant-depth circuits and local models, enabling better pseudorandom generators for cryptography and space-bounded computation with low complexity.
Contribution
It provides explicit constructions of randomness extractors in AC0 and local models with significantly improved parameters over prior work.
Findings
Constructed AC0 extractors with better parameters.
Enabled cryptographic pseudorandom generators in AC0.
Achieved unconditional pseudorandom generators for space-bounded computation.
Abstract
Randomness extractors, which extract high quality (almost-uniform) random bits from biased random sources, are important objects both in theory and in practice. While there have been significant progress in obtaining near optimal constructions of randomness extractors in various settings, the computational complexity of randomness extractors is still much less studied. In particular, it is not clear whether randomness extractors with good parameters can be computed in several interesting complexity classes that are much weaker than P. In this paper we study randomness extractors in the following two models of computation: (1) constant-depth circuits (AC0), and (2) the local computation model. Previous work in these models, such as [Vio05a], [GVW15] and [BG13], only achieve constructions with weak parameters. In this work we give explicit constructions of randomness extractors with…
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