A Few Interactions Improve Distributed Nonparametric Estimation, Optimally

07/01/2021
by   Jingbo Liu, et al.
0

Consider the problem of nonparametric estimation of an unknown β-Hölder smooth density p_XY at a given point, where X and Y are both d dimensional. An infinite sequence of i.i.d. samples (X_i,Y_i) are generated according to this distribution, and Alice and Bob observe (X_i) and (Y_i), respectively. They are allowed to exchange k bits either in oneway or interactively in order for Bob to estimate the unknown density. For β∈(0,2], we show that the minimax mean square risk is order (k/log k)^-2β/d+2β for one-way protocols and k^-2β/d+2β for interactive protocols. The logarithmic improvement is nonexistent in the parametric counterparts, and therefore can be regarded as a consequence of nonparametric nature of the problem. Moreover, a few rounds of interactions achieve the interactive minimax rate: we show that the number of rounds can grow as slowly as the super-logarithm (i.e., inverse tetration) of k.

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset
Success!
Error Icon An error occurred

Sign in with Google

×

Use your Google Account to sign in to DeepAI

×

Consider DeepAI Pro