Jayadev Acharya, Clément L. Canonne, et al.
IEEE Trans. Inf. Theory
A central server needs to perform statistical inference based on samples that are distributed over multiple users who can each send a message of limited length to the center. We study problems of distribution learning and identity testing in this distributed inference setting and examine the role of shared randomness as a resource. We propose a general-purpose simulate-and-infer strategy that uses only private-coin communication protocols and is sample-optimal for distribution learning. This general strategy turns out to be sample-optimal even for distribution testing among private-coin protocols. Interestingly, we propose a public-coin protocol that outperforms simulate-and-infer for distribution testing and is, in fact, sample-optimal. Underlying our public-coin protocol is a random hash that when applied to the samples minimally contracts the chi-squared distance of their distribution to the uniform distribution.
Jayadev Acharya, Clément L. Canonne, et al.
IEEE Trans. Inf. Theory
Jayadev Acharya, Clément L. Canonne, et al.
IEEE Trans. Inf. Theory
Clément L. Canonne, Karl Wimmer
APPROX/RANDOM 2020
Clément L. Canonne, Xi Chen, et al.
SODA 2021