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The convergent learning of three-layer artificial neural networks for any binary-to-binary mapping

机译:三层人工神经网络的任意二进制到二进制映射的收敛学习

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In this paper, the learning algorithm called expand-and-truncate learning (ETL) is proposed to train three-layer binary neural networks (BNN) with guaranteed convergence for any binary-to-binary mapping. The most significant contribution of this paper is the development of learning algorithm for three-layer BNN which guarantees the convergence, automatically determining a required number of neurons in the hidden layer. Furthermore, the learning speed of the proposed ETL algorithm is much faster than that of backpropagation learning algorithm in a binary field. Neurons in the proposed BNN employ a hard-limiter activation function, only integer weights and integer thresholds. Therefore, this will greatly facilitate actual hardware implementation of the proposed BNN using currently available digital VLSI technology.
机译:在本文中,提出了一种称为扩展和截断学习(ETL)的学习算法,用于训练三层二进制神经网络(BNN),并且保证任何二进制到二进制映射的收敛性。本文最重要的贡献是开发了用于三层BNN的学习算法,该算法可确保收敛,并自动确定隐藏层中所需的神经元数量。此外,在二进制领域中,提出的ETL算法的学习速度比反向传播学习算法要快得多。提出的BNN中的神经元使用硬限制器激活函数,仅使用整数权重和整数阈值。因此,这将极大地促进使用当前可用的数字VLSI技术对建议的BNN进行实际的硬件实现。

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