Neural cryptography with feedback
classification
❄️ cond-mat.dis-nn
keywords
feedbackcryptographyneuralforcesrepulsiveaddedadditionanalytic
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Neural cryptography is based on a competition between attractive and repulsive stochastic forces. A feedback mechanism is added to neural cryptography which increases the repulsive forces. Using numerical simulations and an analytic approach, the probability of a successful attack is calculated for different model parameters. Scaling laws are derived which show that feedback improves the security of the system. In addition, a network with feedback generates a pseudorandom bit sequence which can be used to encrypt and decrypt a secret message.
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