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On the Optimal Bounds for Noisy Computing

21 June 2023
Banghua Zhu
Ziao Wang
Nadim Ghaddar
Jiantao Jiao
Lele Wang
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Abstract

We revisit the problem of computing with noisy information considered in Feige et al. 1994, which includes computing the OR function from noisy queries, and computing the MAX, SEARCH and SORT functions from noisy pairwise comparisons. For KKK given elements, the goal is to correctly recover the desired function with probability at least 1−δ1-\delta1−δ when the outcome of each query is flipped with probability ppp. We consider both the adaptive sampling setting where each query can be adaptively designed based on past outcomes, and the non-adaptive sampling setting where the query cannot depend on past outcomes. The prior work provides tight bounds on the worst-case query complexity in terms of the dependence on KKK. However, the upper and lower bounds do not match in terms of the dependence on δ\deltaδ and ppp. We improve the lower bounds for all the four functions under both adaptive and non-adaptive query models. Most of our lower bounds match the upper bounds up to constant factors when either ppp or δ\deltaδ is bounded away from 000, while the ratio between the best prior upper and lower bounds goes to infinity when p→0p\rightarrow 0p→0 or p→1/2p\rightarrow 1/2p→1/2. On the other hand, we also provide matching upper and lower bounds for the number of queries in expectation, improving both the upper and lower bounds for the variable-length query model.

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