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Phenomenological models of synaptic plasticity based on spike timing

机译:基于峰值时序的突触可塑性现象学模型

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Synaptic plasticity is considered to be the biological substrate of learning and memory. In this document we review phenomenological models of short-term and long-term synaptic plasticity, in particular spike-timing dependent plasticity (STDP). The aim of the document is to provide a framework for classifying and evaluating different models of plasticity. We focus on phenomenological synaptic models that are compatible with integrate-and-fire type neuron models where each neuron is described by a small number of variables. This implies that synaptic update rules for short-term or long-term plasticity can only depend on spike timing and, potentially, on membrane potential, as well as on the value of the synaptic weight, or on low-pass filtered (temporally averaged) versions of the above variables. We examine the ability of the models to account for experimental data and to fulfill expectations derived from theoretical considerations. We further discuss their relations to teacher-based rules (supervised learning) and reward-based rules (reinforcement learning). All models discussed in this paper are suitable for large-scale network simulations.
机译:突触可塑性被认为是学习和记忆的生物学基础。在本文中,我们回顾了短期和长期突触可塑性,特别是依赖于尖峰时序的可塑性(STDP)的现象学模型。该文件的目的是提供一个分类和评估不同可塑性模型的框架。我们专注于与整合和发射型神经元模型兼容的现象学突触模型,其中每个神经元由少量变量描述。这意味着短期或长期可塑性的突触更新规则只能取决于尖峰时间,并可能取决于膜电位,突触权重值或低通滤波(暂时平均)以上变量的版本。我们研究了模型考虑实验数据并满足从理论考虑得出的期望的能力。我们进一步讨论他们与基于教师的规则(监督学习)和基于奖励的规则(强化学习)的关系。本文讨论的所有模型都适用于大规模网络仿真。

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