1 research outputs found
Amplification and Derandomization Without Slowdown
We present techniques for decreasing the error probability of randomized
algorithms and for converting randomized algorithms to deterministic
(non-uniform) algorithms. Unlike most existing techniques that involve
repetition of the randomized algorithm and hence a slowdown, our techniques
produce algorithms with a similar run-time to the original randomized
algorithms. The amplification technique is related to a certain stochastic
multi-armed bandit problem. The derandomization technique - which is the main
contribution of this work - points to an intriguing connection between
derandomization and sketching/sparsification.
We demonstrate the techniques by showing applications to Max-Cut on dense
graphs, approximate clique on graphs that contain a large clique, constraint
satisfaction problems on dense bipartite graphs and the list decoding to unique
decoding problem for the Reed-Muller code