Machine learning for modular multiplication

Lauter, Kristin, Li, Cathy Yuanchen, Maughan, Krystal, Newton, Rachel, Srivastava, Megha

arXiv.org Artificial Intelligence 

Motivated by cryptographic applications, we investigate two machine learning approaches to modular multiplication: namely circular regression and a sequence-to-sequence transformer model. The limited success of both methods demonstrated in our results gives evidence for the hardness of tasks involving modular multiplication upon which cryptosystems are based.

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