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A Proof of a Key Formula in the Error-Backpropagation Learning Algorithm for Multiple Spiking Neural Networks

机译:多个尖峰神经网络误差 - 反向衰减学习算法中的密钥公式证明

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In the error-backpropagation learning algorithm for spiking neural networks, solving the differentiation of the firing time t~α with respect to the weight w is essential. Bohte et al. see the firing time t~α as a functional of the state variable x(t). But the differentiation of the firing time t~α with respect to the state variable x(t) is impossible to perform directly. To overcome this problem, Bohte et al. assume that the state variable x(t) is a linear function of the time t around t = t~α. Then, it seems that the solution of Bohte et al. is used by all related Literatures. In particular, Ghosh-Dastidar and Adeli offer another explanation. In this paper, we consider the firing time t~α as a function of the time t and the weight w and prove that the key formula for multiple spiking neural networks is in fact mathematically correct through the implicit function theorem.
机译:在用于尖峰神经网络的误差抛弃学习算法中,解决对重量W的烧制时间T〜α的差异是必不可少的。 Bohte等。将触发时间t〜α视为状态变量x(t)的功能。但是对燃烧时间T〜α相对于状态变量x(t)的分化是不可能直接执行的。克服这个问题,Bohte等人。假设状态变量x(t)是t = t〜α周围的时间t的线性函数。然后,似乎Bohte等人的解决方案。所有相关文献使用。特别是Ghosh-Dastidar和Adeli提供了另一种解释。在本文中,我们考虑作为时间t的函数的烧制时间t〜α以及权重W,并证明多个尖刺神经网络的关键公式实际上是通过隐式功能定理来数学上正确的。

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