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Binary Neuro-Fuzzy Classifiers Trained by Nonlinear Quantum Circuits

机译:由非线性量子电路训练的二元神经模糊分类器

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The possibility of solving an optimization problem by an exhaustive search on all the possible solutions can advantageously replace traditional algorithms for learning neuro-fuzzy networks. For this purpose, the architecture of such networks should be tailored to the requirements of quantum processing. In particular, it is necessary to introduce superposition for pursuing parallelism and entanglement. In the present paper the specific case of neuro-fuzzy networks applied to binary classification is investigated. The peculiarity of the proposed method is the use of a nonlinear quantum algorithm for extracting the optimal neuro-fuzzy network. The computational complexity of the training process is considerably reduced with respect to the use of other classical approaches.
机译:通过彻底搜索所有可能的解决方案来解决优化问题的可能性可以有利地代替传统的算法,以学习神经模糊网络。为此,应根据量子处理的要求量定制此类网络的架构。特别是,有必要引入追求平行和纠缠的叠加。在本文中,研究了应用于二进制分类的神经模糊网络的具体情况。所提出的方法的特殊性是使用非线性量子算法来提取最佳神经模糊网络。关于使用其他古典方法的训练过程的计算复杂性显着减少。

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