Evolving Bent Quaternary Functions

S. Picek, Karlo Knezevic, L. Mariot, D. Jakobović, A. Leporati
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引用次数: 8

Abstract

Boolean functions have a prominent role in many real-world applications, which makes them a very active research domain. Throughout the years, various heuristic techniques proved to be an attractive choice for the construction of Boolean functions with different properties. One of the most important properties is nonlinearity, and in particular maximally nonlinear Boolean functions are also called bent functions. In this paper, instead of considering Boolean functions, we experiment with quaternary functions. The corresponding problem is much more difficult and presents an interesting benchmark as well as realworld applications. The results we obtain show that evolutionary metaheuristics, especially genetic programming, succeed in finding quaternary functions with the desired properties. The obtained results in the quaternary domain can also be translated into the binary domain, in which case this approach compares favorably with the state-of-the-art in Boolean optimization. Our techniques are able to find quaternary bent functions for up to 8 inputs, which corresponds to obtaining Boolean bent functions of 16 inputs.
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演化的弯曲第四纪函数
布尔函数在许多实际应用中具有突出的作用,这使其成为一个非常活跃的研究领域。多年来,各种启发式技术被证明是构造具有不同性质的布尔函数的一种有吸引力的选择。其中一个最重要的性质是非线性,特别是非线性最大的布尔函数也被称为弯曲函数。在本文中,我们不再考虑布尔函数,而是用四元函数进行实验。相应的问题要困难得多,并且提供了一个有趣的基准以及现实世界的应用程序。结果表明,进化元启发式方法,特别是遗传规划方法,能够成功地找到具有理想性质的四元函数。在四元域中获得的结果也可以转换为二进制域,在这种情况下,这种方法与布尔优化中的最新技术相比具有优势。我们的技术能够找到多达8个输入的四元弯曲函数,这相当于获得16个输入的布尔弯曲函数。
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