Distribution-Free Proofs of Proximity
Motivated by the fact that input distributions are often unknown in advance, distribution-free property testing considers a setting in which the algorithmic task is to accept functions f : [n] →{0,1} having a certain property Π and reject functions that are ϵ-far from Π, where the distance is measured according to an arbitrary and unknown input distribution D ∼ [n]. As usual in property testing, the tester is required to do so while making only a sublinear number of input queries, but as the distribution is unknown, we also allow a sublinear number of samples from the distribution D. In this work we initiate the study of distribution-free interactive proofs of proximity (df-IPP) in which the distribution-free testing algorithm is assisted by an all powerful but untrusted prover. Our main result is a df-IPP for any problem Π∈ NC, with Õ(√(n)) communication, sample, query, and verification complexities, for any proximity parameter ϵ>1/√(n). For such proximity parameters, this result matches the parameters of the best-known general purpose IPPs in the standard uniform setting, and is optimal under reasonable cryptographic assumptions. For general values of the proximity parameter ϵ, our distribution-free IPP has optimal query complexity O(1/ϵ) but the communication complexity is Õ(ϵ· n + 1/ϵ), which is worse than what is known for uniform IPPs when ϵ<1/√(n). With the aim of improving on this gap, we further show that for IPPs over specialised, but large distribution families, such as sufficiently smooth distributions and product distributions, the communication complexity can be reduced to ϵ· n·(1/ϵ)^o(1) (keeping the query complexity roughly the same as before) to match the communication complexity of the uniform case.
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