A Boolean function generator with learning capability

Y. Chu, C. M. Hsieh
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引用次数: 1

Abstract

The authors use a neural technique to implement a positive logic Boolean function or truth table. The neural technique is a perceptron training algorithm by which a Boolean function or truth table can be generated. The connected weight value in the neural network represents the sum of product terms of a Boolean function or row vectors of a truth table. A neural technique for generating functional-link cells for successful learning is described. The authors then provide an improved algorithm to describe the successful learning steps to generate the logic function and then present examples to illustrate these learning steps. Finally, a function diagram is specified to illustrate the overall system function.<>
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具有学习能力的布尔函数生成器
作者使用神经技术来实现一个正逻辑布尔函数或真值表。神经技术是一种感知器训练算法,通过该算法可以生成布尔函数或真值表。神经网络中的连接权值表示布尔函数的乘积项或真值表的行向量的和。描述了一种用于生成成功学习的功能连接细胞的神经技术。然后,作者提供了一种改进的算法来描述生成逻辑函数的成功学习步骤,并给出了示例来说明这些学习步骤。最后,给出了一个功能框图来说明整个系统的功能
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Control of a robotic manipulating arm by a neural network simulation of the human cerebral and cerebellar cortical processes Neural network training using homotopy continuation methods A learning scheme of neural networks which improves accuracy and speed of convergence using redundant and diversified network structures The abilities of neural networks to abstract and to use abstractions Backpropagation based on the logarithmic error function and elimination of local minima
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