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Multi-valued Neural Network Trained by Differential Evolution for Synthesizing Multiple-Valued Functions

机译:差分演化训练的多值神经网络用于合成多值函数

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We consider the problem of synthesizing multiple valued logic (MVL) functions by neural networks. A differential evolution algorithm is proposed to train the learnable multiple valued logic network. The optimum window and biasing parameters to be chosen for convergence are derived. Experiments performed on benchmark problems demonstrate the convergence and robustness of the network. Preliminary results indicate that differential evolution is suitable to train MVL networks for synthesizing MVL functions.
机译:我们考虑了通过神经网络合成多值逻辑(MVL)函数的问题。提出了一种差分进化算法来训练可学习的多值逻辑网络。推导了为收敛选择的最佳窗口和偏置参数。对基准问题进行的实验证明了网络的收敛性和健壮性。初步结果表明,差分进化适合于训练用于合成MVL功能的MVL网络。

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