Finding balanced, highly nonlinear Boolean functions is a difficult problem where it is not known what nonlinearity values are possible to be reached in general. At the same time, evolutionary computation is successfully used to evolve specific Boolean function instances, but the approach cannot easily scale for larger Boolean function sizes. Indeed, while evolving smaller Boolean functions is almost trivial, larger sizes become increasingly difficult, and evolutionary algorithms perform suboptimally.In this work, we ask whether genetic programming (GP) can evolve constructions resulting in balanced Boolean functions with high nonlinearity. This question is especially interesting as there are only a few known such constructions. Our results show that GP can find constructions that generalize well, i.e., result in the required functions for multiple tested sizes. Further, we show that GP evolves many equivalent constructions under different syntactic representations. Interestingly, the simplest solution found by GP is a particular case of the well-known indirect sum construction.

Carlet, C., Djurasevic, M., Jakobovic, D., Mariot, L., Picek, S. (2022). Evolving constructions for balanced, highly nonlinear boolean functions. In GECCO 2022 - Proceedings of the 2022 Genetic and Evolutionary Computation Conference (pp.1147-1155). Association for Computing Machinery, Inc [10.1145/3512290.3528871].

Evolving constructions for balanced, highly nonlinear boolean functions

Mariot, Luca;
2022

Abstract

Finding balanced, highly nonlinear Boolean functions is a difficult problem where it is not known what nonlinearity values are possible to be reached in general. At the same time, evolutionary computation is successfully used to evolve specific Boolean function instances, but the approach cannot easily scale for larger Boolean function sizes. Indeed, while evolving smaller Boolean functions is almost trivial, larger sizes become increasingly difficult, and evolutionary algorithms perform suboptimally.In this work, we ask whether genetic programming (GP) can evolve constructions resulting in balanced Boolean functions with high nonlinearity. This question is especially interesting as there are only a few known such constructions. Our results show that GP can find constructions that generalize well, i.e., result in the required functions for multiple tested sizes. Further, we show that GP evolves many equivalent constructions under different syntactic representations. Interestingly, the simplest solution found by GP is a particular case of the well-known indirect sum construction.
paper
Evolutionary Algorithms; Boolean Functions; Balancedness; Nonlinearity; Secondary Constructions
English
2022 Genetic and Evolutionary Computation Conference, GECCO 2022 - 9 July 2022 through 13 July 2022
2022
GECCO 2022 - Proceedings of the 2022 Genetic and Evolutionary Computation Conference
9781450392372
2022
1147
1155
open
Carlet, C., Djurasevic, M., Jakobovic, D., Mariot, L., Picek, S. (2022). Evolving constructions for balanced, highly nonlinear boolean functions. In GECCO 2022 - Proceedings of the 2022 Genetic and Evolutionary Computation Conference (pp.1147-1155). Association for Computing Machinery, Inc [10.1145/3512290.3528871].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/501979
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