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Approximate Probabilistic Neural Networks with Gated Threshold Logic

机译:门控逻辑的近似概率神经网络

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Probabilistic Neural Network (PNN) is a feedforward artificial neural network developed for solving classification problems. This paper proposes a hardware implementation of an approximated PNN (APNN) algorithm in which the conventional exponential function of the PNN is replaced with gated threshold logic. The weights of the PNN are approximated using a memristive crossbar architecture. In particular, the proposed algorithm performs normalization of the training weights, and quantization into 16 levels which significantly reduces the complexity of the circuit.
机译:概率神经网络(PNN)是为解决分类问题而开发的前馈人工神经网络。本文提出了一种近似PNN(APNN)算法的硬件实现,其中PNN的常规指数函数被门控阈值逻辑代替。 PNN的权重使用忆阻纵横式架构来估算。特别地,所提出的算法执行训练权重的归一化,并量化为16个级别,这大大降低了电路的复杂性。

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