Paper Title:
Analysis and Improvement of Random Number Generating Algorithm
  Abstract

Random number is widely used in computer application. What is used commonly in practice is pseudo-random number generated by mathematical algorithm. Several useful pseudo-random number generating algorithm and random testing methods are discussed. And according to the disadvantage of traditional algorithm, improvement of pseudo-random number generating algorithm and some new methods to generate real-random number are summarized and analyzed.

  Info
Periodical
Edited by
Shengyi Li, Yingchun Liu, Rongbo Zhu, Hongguang Li, Wensi Ding
Pages
153-156
DOI
10.4028/www.scientific.net/AMM.34-35.153
Citation
Y. F. Li, Q. F. Zhao, "Analysis and Improvement of Random Number Generating Algorithm", Applied Mechanics and Materials, Vols. 34-35, pp. 153-156, 2010
Online since
October 2010
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