Dimensionality reduction using neural networks for lattice-based cryptographic keys
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Date
2024
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Journal Title
Journal ISSN
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Publisher
Taylor and Francis Ltd.
Abstract
Post Quantum Cryptography has received an increasing amount of active research. This has been made prominent by the ever-growing field of quantum computing which poses a formidable threat to the modern cybersecurity landscape. Recently, post quantum schemes have been standardized for adoption into existing security services and protocols. In comparison to contemporary cryptographic schemes, these approaches are lagging behind in terms of performance with regards to functional speed and package sizes. A study into the various applications of neural networks used in classical and post quantum cryptographic schemes has been explored to demonstrate their different possible applications within the various fields of cybersecurity. The main contribution of this work is to investigate the feasibility of dimensionality reduction using the autoencoder neural network on lattice-based keys generated by the Kyber key encapsulation mechanism scheme. Moreover, this work also presents a comparative analysis of the different implemented autoencoder models to showcase their relative performance. © 2024 Informa UK Limited, trading as Taylor & Francis Group.
Description
Keywords
Cybersecurity, Neural networks, Quantum computers, Quantum cryptography, Auto encoders, Cryptographic key, Cryptographic schemes, Cyber security, Dimensionality reduction, Lattice-based, Neural Cryptography, Neural-networks, Post quantum, Post quantum cryptography
Citation
International Journal of Computers and Applications, 2024, 46, 10, pp. 889-910
