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Associate learning law in a memristive neural network

机译:忆阻神经网络中的关联学习法

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In this paper, the Max-Input-Feedback (MIF) algorithm is further studied. It is shown that the choice of the feedback function plays a vital role in improving the performance of the MIF law. By constructing a simple memristive neural network (MNN), trained by the MIF law, to implement the modified Pavlov experiment, a preliminary design criterion of the feedback function is obtained. The effects caused by the parameters of the feedback function on the learning and correcting processes are established. It is indicated that faster learning and correcting speeds can be achieved by choosing a proper feedback function. It is expected that it may provide a guide to the potential applications of the MIF law.
机译:本文进一步研究了最大输入反馈(MIF)算法。结果表明,反馈功能的选择对改善MIF法则的性能起着至关重要的作用。通过构造一个受MIF律训练的简单忆阻神经网络(MNN),以实施改进的Pavlov实验,获得了反馈函数的初步设计准则。确定了由反馈函数的参数引起的对学习和纠正过程的影响。表明通过选择适当的反馈功能可以实现更快的学习和纠正速度。预计它将为MIF法律的潜在应用提供指南。

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