Dynamical Pseudo-Random Number Generator Using Reinforcement Learning

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초록

Pseudo-random number generators (PRNGs) are based on the algorithm that generates a sequence of numbers arranged randomly. Recently, random numbers have been generated through a reinforcement learning mechanism. This method generates random numbers based on reinforcement learning characteristics that select the optimal behavior considering every possible status up to the point of episode closing to secure the randomness of such random numbers. The LSTM method is used for the long-term memory of previous patterns and selection of new patterns in consideration of such previous patterns. In addition, feature vectors extracted from the LSTM are accumulated, and their images are generated to overcome the limitation of LSTM long-term memory. From these generated images, features are extracted using CNN. This dynamical pseudo-random number generator secures the randomness of random numbers.

키워드

reinforcement learningdynamical pseudo-random number generatorRNNCNNagentenvironment
제목
Dynamical Pseudo-Random Number Generator Using Reinforcement Learning
저자
Park, SungjuKim, KyungminKim, KeunjinNam, Choonsung
DOI
10.3390/app12073377
발행일
2022-04
유형
Article
저널명
Applied Sciences-basel
12
7