Pseudo-random number generation techniques are an essential tool to correctly test machine learning processes. The methodologies are many, but also the possibilities to combine them in a new way are plenty. Thus, there is a chance to create mechanisms potentially useful in new and better generators. In this paper, we present a new pseudo-random number generator based on a hybrid of two existing generators - a linear congruential method and a delayed Fibonacci technique. We demonstrate the implementation of the generator by checking its correctness and properties using chi-square, Kolmogorov and TestU01.1.2.3 tests and we apply the Monte Carlo Cross Validation method in classification context to test the performance of the generator in practice.
CITATION STYLE
Cybulski, R. (2021). Pseudo-random number generator based on linear congruence and delayed Fibonacci method. Technical Sciences, (2021). https://doi.org/10.31648/ts.7238
Mendeley helps you to discover research relevant for your work.