We develop a technique for proving lower bounds in the setting of asymmetric communication, a model that was introduced in the famous works of Miltersen (STOC'94) and Miltersen, Nisan, Safra and Wigderson (STOC'95). At the core of our technique is a novel simulation theorem. Alice gets a
The first strong lower-bounds against randomized data-structure schemes for the Vector-Matrix-Vector product problem over
The first lower bounds against randomized data-structures schemes for two natural Boolean variants of Orthogonal Vector Counting.
We construct an asymmetric communication problem and obtain a deterministic lower-bound for it which is provably better than any lower-bound that may be obtained by the classical Richness Method of Miltersen et al. This seems to be the first known limitation of the Richness Method in the context of proving deterministic lower bounds.