Broadcast Congested Clique: Planted Cliques and Pseudorandom Generators
We develop techniques to prove lower bounds for the BCAST(log n) Broadcast Congested Clique model (a distributed message passing model where in each round, each processor can broadcast an O(log n)-sized message to all other processors). Our techniques are built to prove bounds for natural input dist...
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Zusammenfassung: | We develop techniques to prove lower bounds for the BCAST(log n) Broadcast
Congested Clique model (a distributed message passing model where in each
round, each processor can broadcast an O(log n)-sized message to all other
processors). Our techniques are built to prove bounds for natural input
distributions. So far, all lower bounds for problems in the model relied on
constructing specifically tailored graph families for the specific problem at
hand, resulting in lower bounds for artificially constructed inputs, instead of
natural input distributions.
One of our results is a lower bound for the directed planted clique problem.
In this problem, an input graph is either a random directed graph (each
directed edge is included with probability 1/2), or a random graph with a
planted clique of size k. That is, k randomly chosen vertices have all of the
edges between them included, and all other edges in the graph appear with
probability 1/2. The goal is to determine whether a clique exists. We show that
when k = n^(1/4 - eps), this problem requires a number of rounds polynomial in
n.
Additionally, we construct a pseudo-random generator which fools the
Broadcast Congested Clique. This allows us to show that every k round
randomized algorithm in which each processor uses up to n random bits can be
efficiently transformed into an O(k)-round randomized algorithm in which each
processor uses only up to O(k log n) random bits, while maintaining a high
success probability. The pseudo-random generator is simple to describe,
computationally very cheap, and its seed size is optimal up to constant
factors. However, the analysis is quite involved, and is based on the new
technique for proving lower bounds in the model.
The technique also allows us to prove the first average case lower bound for
the Broadcast Congested Clique, as well as an average-case time hierarchy. |
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DOI: | 10.48550/arxiv.1905.07780 |