December 24, Wednesday
08:00 – 09:00
Our method relies on extracting randomness from ``same-source'' product distributions, which are distributions generated from multiple independent samples from the same source. The extraction process succeeds even for arbitrarily low min-entropy, and is based on the order of the values and not on the values themselves (This may be seen as a generalization of the classical method of Von-Neumann extended by Elias for extracting randomness from a biased coin).
The tools developed in the paper are generic, and can be used elsewhere. We present applications to streaming algorithms, and to implicit probe search cite{FiatNaor93}. We also refine our method to handle product distributions, where the i'th sample comes from one of several arbitrary unknown distributions. This requires creating a new set of tools, which may also be of independent interest.
Joint work with Ariel Gabizon