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A new approach to analyze the independence of statistical tests of randomness

Elena Almaraz Luengo, Marcos Brian Leiva Cerna, Luis Javier García Villalba, Julio Hernández-Castro

2022Applied Mathematics and Computation10 citationsDOIOpen Access PDF

Abstract

One of the fundamental aspects when working with batteries of statistic tests is that they should be as efficient as possible, i.e. that they should check the properties and do so in a reasonable computational time. This assumes that there are no tests that are checking the same properties, i.e. that they are not correlated. One of the most commonly used measures to verify the interrelation between variables is the Pearson’s correlation. In this case, linear dependencies are checked, but it may be interesting to verify other types of non-linear relationships between variables. For this purpose, mutual information has recently been proposed, which measures how much information, on average, one random variable provides to another. In this work we analyze some well-known batteries by using correlation analysis and mutual information approaches.

Topics & Concepts

RandomnessMutual informationStatisticIndependence (probability theory)Distance correlationRandom variableMathematicsRandomness testsComputer scienceVariable (mathematics)Statistical hypothesis testingAlgorithmTheoretical computer scienceStatisticsMathematical analysisNeural Networks and ApplicationsChaos-based Image/Signal EncryptionFractal and DNA sequence analysis