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A Synaptic Plasticity Rule Providing a Unified Approach to Supervised and Unsupervised Learning.

机译:突触可塑性规则提供了统一的监督和无监督学习方法。

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At the early stages of their exploration, spiking neural networks were considered mainly as plausible models of biological neuronal ensembles, but then it became clear that they can solve many of the same problems as the traditional neural networks - classification and clustering using various supervised and unsupervised learning methods. The majority of synaptic weight adjustment algorithms proposed for these two kinds of learning are based on different principles - Hebbian learning (STDP etc.) for unsupervised learning and gradient methods similar to error backpropagation - for supervised learning. Since the biological plausibility of gradient descent algorithms is doubtful, it would be desirable to find a purely Hebbian mechanism for the both kinds of learning. The appropriate synaptic plasticity law (though different from STDP) is considered in this paper. It is called 2TP (Two Threshold Plasticity) rule because it includes 2 thresholds for membrane potential - one for firing, leading to synapse potentiation, and one for synaptic depression. It is demonstrated that this rule can serve as a basis for efficient unsupervised and supervised learning algorithms called L2TP/U and L2TP/S, respectively.
机译:在他们勘探的早期阶段,尖峰神经网络主要被认为是生物神经元合理的典雅模型,但随后他们可以解决许多与传统的神经网络的许多相同的问题 - 使用各种监督和无人监督的分类和聚类学习方法。对于这两种学习提出的大多数突触权重调整算法基于不同的原则 - Hebbian学习(STDP等),用于无监督的学习和梯度方法类似于错误反向化 - 用于监督学习。由于梯度下降算法的生物合理性是值得怀疑的,因此希望找到两种学习的纯粹的Hebbian机制。本文考虑了适当的突触塑性法(虽然与STDP不同)。它被称为2TP(两个阈值可塑性)规则,因为它包括2个用于膜电位的阈值 - 一个用于射击,导致突触抑制,一个用于突触抑郁症。据证明,该规则可以作为高效的无监督和监督的学习算法分别作为称为L2TP / U和L2TP / s的基础。

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