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Data Driven Models of Short-Term Synaptic Plasticity

机译:短期突触可塑性的数据驱动模型

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摘要

Simple models of short term synaptic plasticity that incorporate facilitation and/or depression have been created in abundance for different synapse types and circumstances. The analysis of these models has included computing mutual information between a stochastic input spike train and some sort of representation of the postsynaptic response. While this approach has proven useful in many contexts, for the purpose of determining the type of process underlying a stochastic output train, it ignores the ordering of the responses, leaving an important characterizing feature on the table. In this paper we use a broader class of information measures on output only, and specifically construct hidden Markov models (HMMs) (known as epsilon machines or causal state models) to differentiate between synapse type, and classify the complexity of the process. We find that the machines allow us to differentiate between processes in a way not possible by considering distributions alone. We are also able to understand these differences in terms of the dynamics of the model used to create the output response, bringing the analysis full circle. Hence this technique provides a complimentary description of the synaptic filtering process, and potentially expands the interpretation of future experimental results.
机译:对于不同的突触类型和情况,已经大量创建了包含促进和/或抑制的短期突触可塑性的简单模型。这些模型的分析包括计算随机输入峰值序列和突触后反应的某种表示形式之间的相互信息。尽管已证明此方法在许多情况下有用,但出于确定随机输出序列基础的过程类型的目的,它忽略了响应的顺序,从而在表上留下了重要的特征。在本文中,我们仅对输出使用更广泛的信息度量,并且专门构造隐马尔可夫模型(HMM)(称为epsilon机器或因果状态模型)以区分突触类型,并对过程的复杂性进行分类。我们发现,这些机器使我们能够通过单独考虑分布来以不可能的方式区分流程。我们还能够根据用于创建输出响应的模型的动态性来理解这些差异,从而使分析全面展开。因此,该技术提供了对突触过滤过程的补充描述,并有可能扩展对未来实验结果的解释。

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