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Selecting an Effective Entropy Estimator for Short Sequences of Bits and Bytes with Maximum Entropy

Lianet Contreras Rodríguez, Evaristo José Madarro-Capó, Carlos Miguel Legón-Pérez, Omar Rojas, Guillermo Sosa-Gómez

2021Entropy22 citationsDOIOpen Access PDF

Abstract

Entropy makes it possible to measure the uncertainty about an information source from the distribution of its output symbols. It is known that the maximum Shannon's entropy of a discrete source of information is reached when its symbols follow a Uniform distribution. In cryptography, these sources have great applications since they allow for the highest security standards to be reached. In this work, the most effective estimator is selected to estimate entropy in short samples of bytes and bits with maximum entropy. For this, 18 estimators were compared. Results concerning the comparisons published in the literature between these estimators are discussed. The most suitable estimator is determined experimentally, based on its bias, the mean square error short samples of bytes and bits.

Topics & Concepts

ByteMathematicsEstimatorEntropy (arrow of time)Maximum entropy probability distributionMin entropyEntropy estimationStatistical physicsPrinciple of maximum entropyEntropy rateAlgorithmStatisticsApplied mathematicsComputer scienceBinary entropy functionPhysicsThermodynamicsOperating systemAlgorithms and Data CompressionCellular Automata and ApplicationsEvolutionary Algorithms and Applications
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