Nearly Optimal Pseudorandomness From Hardness

2020 IEEE 61ST ANNUAL SYMPOSIUM ON FOUNDATIONS OF COMPUTER SCIENCE (FOCS 2020)(2022)

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摘要
Existing proofs that deduce BPP = P from circuit lower bounds convert randomized algorithms into deterministic algorithms with a large polynomial slowdown. We convert randomized algorithms into deterministic ones with little slowdown . Specifically, assuming exponential lower bounds against randomized NP ∩ coNP circuits, formally known as randomized SVN circuits, we convert any randomized algorithm over inputs of length n running in time t ≥ n into a deterministic one running in time t 2 + α for an arbitrarily small constant α > 0. Such a slowdown is nearly optimal for t close to n , since under standard complexity-theoretic assumptions, there are problems with an inherent quadratic derandomization slowdown. We also convert any randomized algorithm that errs rarely into a deterministic algorithm having a similar running time (with pre-processing). The latter derandomization result holds under weaker assumptions, of exponential lower bounds against deterministic SVN circuits. Our results follow from a new, nearly optimal, explicit pseudorandom generator fooling circuits of size s with seed length (1 + α )log s , under the assumption that there exists a function f ∈ E that requires randomized SVN circuits of size at least \(2^{(1-\alpha ^{\prime })n} \) , where α = O ( α ′). The construction uses, among other ideas, a new connection between pseudoentropy generators and locally list recoverable codes.
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关键词
Pseudorandom generators,pseudoentropy,quantified derandomization,list recovery,local list decoding
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