English

Separate Random Number Generation from Correlated Sources

Information Theory 2016-05-02 v3 math.IT

Abstract

This work studies the problem of separate random number generation from correlated general sources with side information at the tester under the criterion of statistical distance. Tight one-shot lower and upper performance bounds are obtained using the random-bin approach. A refined analysis is further performed for two important random-bin maps. One is the pure-random-bin map that is uniformly distributed over the set of all maps (with the same domain and codomain). The other is the equal-random-bin map that is uniformly distributed over the set of all surjective maps that induce an equal or quasi-equal partition of the domain. Both of them are proved to have a doubly-exponential concentration of the performance of their sample maps. As an application, an open and transparent lottery scheme, using a random number generator on a public data source, is proposed to solve the social problem of scarce resource allocation. The core of the proposed framework of lottery algorithms is a permutation, a good rateless randomness extractor, whose existence is confirmed by the theoretical performance of equal-random-bin maps. This extractor, together with other important details of the scheme, ensures that the lottery scheme is immune to all kinds of fraud under some reasonable assumptions.

Keywords

Cite

@article{arxiv.1409.1662,
  title  = {Separate Random Number Generation from Correlated Sources},
  author = {Shengtian Yang},
  journal= {arXiv preprint arXiv:1409.1662},
  year   = {2016}
}

Comments

v1.3.0-8ba126, no.201604282300, 23 pages, 2 figures, revised

R2 v1 2026-06-22T05:49:13.618Z