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首页> 外文期刊>The Journal of Neuroscience: The Official Journal of the Society for Neuroscience >Learning input correlations through nonlinear temporally asymmetric Hebbian plasticity.
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Learning input correlations through nonlinear temporally asymmetric Hebbian plasticity.

机译:通过非线性时间不对称的Hebbian可塑性学习输入相关性。

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Triggered by recent experimental results, temporally asymmetric Hebbian (TAH) plasticity is considered as a candidate model for the biological implementation of competitive synaptic learning, a key concept for the experience-based development of cortical circuitry. However, because of the well known positive feedback instability of correlation-based plasticity, the stability of the resulting learning process has remained a central problem. Plagued by either a runaway of the synaptic efficacies or a greatly reduced sensitivity to input correlations, the learning performance of current models is limited. Here we introduce a novel generalized nonlinear TAH learning rule that allows a balance between stability and sensitivity of learning. Using this rule, we study the capacity of the system to learn patterns of correlations between afferent spike trains. Specifically, we address the question of under which conditions learning induces spontaneous symmetry breaking and leads to inhomogeneous synaptic distributions that capture the structure of the input correlations. To study the efficiency of learning temporal relationships between afferent spike trains through TAH plasticity, we introduce a novel sensitivity measure that quantifies the amount of information about the correlation structure in the input, a learning rule capable of storing in the synaptic weights. We demonstrate that by adjusting the weight dependence of the synaptic changes in TAH plasticity, it is possible to enhance the synaptic representation of temporal input correlations while maintaining the system in a stable learning regime. Indeed, for a given distribution of inputs, the learning efficiency can be optimized.
机译:由最近的实验结果触发,时间不对称的Hebbian(TAH)可塑性被认为是竞争性突触学习的生物学实现的候选模型,竞争性突触学习是基于经验的皮质电路开发的关键概念。但是,由于众所周知的基于相关性的正反馈不稳定性,因此,所获得的学习过程的稳定性仍然是一个中心问题。由于突触效率的失控或对输入相关性的敏感性大大降低的困扰,当前模型的学习性能受到限制。在这里,我们介绍一种新颖的广义非线性TAH学习规则,该规则可以在学习的稳定性和敏感性之间取得平衡。使用此规则,我们研究了系统学习传入穗序列之间的相关模式的能力。具体来说,我们解决了以下问题:学习在哪些条件下导致自发对称性破坏并导致不均匀的突触分布,从而捕获输入相关性的结构。为了研究通过TAH可塑性学习传入峰值序列之间的时间关系的效率,我们引入了一种新颖的灵敏度度量,该度量量化了有关输入中相关结构的信息量,该学习规则能够存储在突触权重中。我们证明,通过调整TAH可塑性中突触变化的重量依赖性,可以在保持系统处于稳定学习状态的同时,增强时间输入相关性的突触表示。实际上,对于给定的输入分布,可以优化学习效率。

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