Let f : 0 1 n 0 1 n 0 1 be a 2-party function. For every product distribution on 0 1 n 0 1 n , we show that C C 0 49 ( f ) = O log rprt 1 4 ( f ) log log rprt 1 4 ( f ) 2 where Missing close brace is the distributional communication complexity with error at most under the distribution and rprt 1 4 ( f ) is the {\em relaxed partition bound} of the function f , as introduced by Kerenidis et al [Proc. FOCS 2012]. A similar upper bound for communication complexity for product distributions in terms of information complexity was recently (and independently) obtained by Kol [ECCC Tech. Report TR15-168].
We show a similar result for query complexity under product distributions. Let g : 0 1 n 0 1 be a function. For every bit-wise product distribution on 0 1 n , we show that Q C 1 3 ( g ) = O log qrprt 1 4 ( g ) log log qrprt 1 4 ( g )) 2 where Q C 1 3 ( g ) is the distributional query complexity with error at most 1 3 under the distribution and qrprt 1 4 ( g )) is the {\em relaxed query partition bound} of the function g .
Recall that relaxed partition bounds were introduced (in both communication complexity and query complexity models) to provide LP-based lower bounds to randomized communication complexity and randomized query complexity. Our results demonstrate that these lower bounds are polynomially tight for {\em product} distributions.