Type-Preserving Matrices and Security of Block Ciphers
March 02, 2018 Β· Declared Dead Β· π Advances in Mathematics of Communications
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Authors
Riccardo Aragona, Alessio Meneghetti
arXiv ID
1803.00965
Category
math.GR
Cross-listed
cs.CR
Citations
2
Venue
Advances in Mathematics of Communications
Last Checked
3 months ago
Abstract
We provide a new property, called Non-Type-Preserving, for a mixing layer which guarantees protection against algebraic attacks based on the imprimitivity of the group generated by the round functions. Our main result is to present necessary and sufficient conditions on the structure of the binary matrix associated to the mixing layer, so that it has this property. Then we show how several families of linear maps are Non-Type-Preserving, including the mixing layers of AES, GOST and PRESENT. Finally we prove that the group generated by the round functions of an SPN cipher with addition modulo a power of 2 as key mixing function is primitive if its mixing layer satisfies this property. Moreover we generalise the definition of a GOST-like cipher using a Non-Type-Preserving matrix as mixing layer and we show, under the only assumption of invertibility of the S-Boxes, that the corresponding group is primitive.
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