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Temporal pattern identification using spike-timing dependent plasticity

机译:使用依赖于尖峰时序的可塑性来识别时间模式

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This paper addresses the question of the functional role of the dual application of positive and negative Hebbian time dependent plasticity rules, in the particular framework of reinforcement learning tasks. Our simulations take place in a recurrent network of spiking neurons with inhomogeneous synaptic weights. A spike-timing dependent plasticity (STDP) rule is combined with its "opposite", the "anti-STDP". A local regulation mechanism moreover maintains the postsynaptic neuron in the vicinity of a reference frequency, which forces the global dynamics to be maintained in a softly disordered regime. This approach is tested on a simple discrimination task which requires short-term memory: temporal pattern classification. We show that such temporal patterns can be categorised, and present tracks for future improvements.
机译:本文讨论了在强化学习任务的特定框架中,正负荷比时间可塑性规则的双重应用的功能作用问题。我们的模拟是在突触神经元具有不均匀突触权重的递归网络中进行的。依赖于峰值定时的可塑性(STDP)规则与其“相反”的“反STDP”组合在一起。此外,局部调节机制将突触后神经元维持在参考频率附近,这迫使整体动力学维持在轻度无序状态。该方法在需要短期记忆的简单区分任务上进行了测试:时间模式分类。我们展示了可以对这种时间模式进行分类,并提供跟踪以供将来改进。

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