Interactive Proofs For Distribution Testing With Conditional Oracles
Ari Biswas, Mark Bun, Cl\'ement Canonne, Satchit Sivakumar

TL;DR
This paper introduces a new model of interactive proofs for distribution testing that uses pairwise conditional queries, enabling exponential savings in sample complexity for testing label-invariant properties over large domains.
Contribution
It proposes augmenting verifiers with pairwise conditional queries, achieving polylogarithmic query and sample complexity for testing label-invariant distribution properties.
Findings
Achieves exponential savings in sample complexity.
Provides polylogarithmic query protocols for distribution testing.
Demonstrates effectiveness for label-invariant properties.
Abstract
We revisit the framework of interactive proofs for distribution testing, first introduced by Chiesa and Gur (ITCS 2018), which has recently experienced a surge in interest, accompanied by notable progress (e.g., Herman and Rothblum, STOC 2022, FOCS 2023; Herman, RANDOM~2024). In this model, a data-poor verifier determines whether a probability distribution has a property of interest by interacting with an all-powerful, data-rich but untrusted prover bent on convincing them that it has the property. While prior work gave sample-, time-, and communication-efficient protocols for testing and estimating a range of distribution properties, they all suffer from an inherent issue: for most interesting properties of distributions over a domain of size , the verifier must draw at least samples of its own. While sublinear in , this is still prohibitive for large domains…
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