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Probabilistic versus Incremental Presynaptic Learning in Biologically Plausible Synapses

机译:在生物学上合理的突触中概率与增量突触前学习。

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In this paper, the presynaptic rule, a classical rule for heb-bian learning, is revisited. It is shown that the presynaptic rule exhibits relevant synaptic properties like synaptic directionality, and LTP metaplasticity (long-term potentiation threshold metaplasticity). With slight modifications, the presynaptic model also exhibits metaplasticity of the long-term depression threshold, being also consistent with Artola, Brocher and Singer's (ABS) influential model. Two asymptotically equivalent versions of the presynaptic rule were adopted for this analysis: the first one uses an incremental equation while the second, conditional probabilities. Despite their simplicity, both types of presynaptic rules exhibit sophisticated biological properties, specially the probabilistic version.
机译:本文探讨了突触前规则,这是heb-bian学习的经典规则。结果表明,突触前规则表现出相关的突触特性,如突触方向性和LTP的可塑性(长期增强阈值可塑性)。稍加修改,突触前模型也表现出长期抑郁阈值的可塑性,也与Artola,Brocher和Singer(ABS)的影响模型一致。这项分析采用了两个渐近等效的突触规则版本:第一个使用增量方程,第二个使用条件概率。尽管它们很简单,但这两种突触前规则都具有复杂的生物学特性,尤其是概率版本。

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