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LqL_qLq​ Lower Bounds on Distributed Estimation via Fisher Information

2 February 2024
Wei-Ning Chen
Ayfer Özgür
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Abstract

Van Trees inequality, also known as the Bayesian Cram\ér-Rao lower bound, is a powerful tool for establishing lower bounds for minimax estimation through Fisher information. It easily adapts to different statistical models and often yields tight bounds. Recently, its application has been extended to distributed estimation with privacy and communication constraints where it yields order-wise optimal minimax lower bounds for various parametric tasks under squared L2L_2L2​ loss. However, a widely perceived drawback of the van Trees inequality is that it is limited to squared L2L_2L2​ loss. The goal of this paper is to dispel that perception by introducing a strengthened version of the van Trees inequality that applies to general LqL_qLq​ loss functions by building on the Efroimovich's inequality -- a lesser-known entropic inequality dating back to the 1970s. We then apply the generalized van Trees inequality to lower bound LqL_qLq​ loss in distributed minimax estimation under communication and local differential privacy constraints. This leads to lower bounds for LqL_qLq​ loss that apply to sequentially interactive and blackboard communication protocols. Additionally, we show how the generalized van Trees inequality can be used to obtain \emph{local} and \emph{non-asymptotic} minimax results that capture the hardness of estimating each instance at finite sample sizes.

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