Finite-precision intrinsic randomness and source resolvability

Y. Steinberg, S. Verdú
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引用次数: 1

Abstract

Random number generators are important devices in randomized algorithms, Monte-Carlo methods, and in simulation studies of random systems. A random number generator is usually modeled as a random source emitting independent, equally likely random bits. In practice, the random source one has at hand can deviate from this idealized model, and the random number generator operates by applying a deterministic mapping on the output of the (nonideal) random source. The deterministic mapping is chosen so that the resulting process approximates, in some sense, a sequence of independent, equally likely random bits. A prime measure of the intrinsic randomness of a given source X is the maximal rate at which random bits can be extracted from X by suitably mapping its output. This maximal rate depends on the statistics of the source X and on the sense of approximation. We study the problem of finite-precision random bit generation, where the accuracy measure is the variational distance. The relevant information theory is addressed.
有限精度固有随机性和源可解析性
随机数发生器是随机算法、蒙特卡罗方法和随机系统仿真研究中的重要器件。随机数生成器通常被建模为一个随机源,发出独立的、等可能的随机比特。在实践中,手头的随机源可能会偏离这个理想模型,随机数生成器通过对(非理想)随机源的输出应用确定性映射来操作。选择确定性映射是为了使结果过程在某种意义上近似于一系列独立的、等可能的随机位。给定源X的固有随机性的主要度量是通过适当地映射其输出从X中提取随机比特的最大速率。这个最大速率取决于源X的统计量和近似值。我们研究了有限精度随机比特生成问题,其中精度度量是变分距离。论述了相关的信息理论。
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