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迟缓:基于峰电位时间依赖性可塑性的一个目标?

Slowness: an objective for spike-timing-dependent plasticity?

作者信息

Sprekeler Henning, Michaelis Christian, Wiskott Laurenz

机构信息

Institute for Theoretical Biology, Humboldt-Universität zu Berlin, Berlin, Germany.

出版信息

PLoS Comput Biol. 2007 Jun;3(6):e112. doi: 10.1371/journal.pcbi.0030112.

Abstract

Our nervous system can efficiently recognize objects in spite of changes in contextual variables such as perspective or lighting conditions. Several lines of research have proposed that this ability for invariant recognition is learned by exploiting the fact that object identities typically vary more slowly in time than contextual variables or noise. Here, we study the question of how this "temporal stability" or "slowness" approach can be implemented within the limits of biologically realistic spike-based learning rules. We first show that slow feature analysis, an algorithm that is based on slowness, can be implemented in linear continuous model neurons by means of a modified Hebbian learning rule. This approach provides a link to the trace rule, which is another implementation of slowness learning. Then, we show analytically that for linear Poisson neurons, slowness learning can be implemented by spike-timing-dependent plasticity (STDP) with a specific learning window. By studying the learning dynamics of STDP, we show that for functional interpretations of STDP, it is not the learning window alone that is relevant but rather the convolution of the learning window with the postsynaptic potential. We then derive STDP learning windows that implement slow feature analysis and the "trace rule." The resulting learning windows are compatible with physiological data both in shape and timescale. Moreover, our analysis shows that the learning window can be split into two functionally different components that are sensitive to reversible and irreversible aspects of the input statistics, respectively. The theory indicates that irreversible input statistics are not in favor of stable weight distributions but may generate oscillatory weight dynamics. Our analysis offers a novel interpretation for the functional role of STDP in physiological neurons.

摘要

尽管诸如视角或光照条件等上下文变量会发生变化,我们的神经系统仍能有效地识别物体。多项研究表明,这种不变识别能力是通过利用物体身份在时间上的变化通常比上下文变量或噪声更缓慢这一事实来习得的。在此,我们研究如何在基于生物现实的基于尖峰的学习规则的限制内实现这种“时间稳定性”或“缓慢变化”方法的问题。我们首先表明,基于缓慢变化的慢特征分析算法可以通过修改后的赫布学习规则在线性连续模型神经元中实现。这种方法提供了与追踪规则的联系,追踪规则是慢变化学习的另一种实现方式。然后,我们通过分析表明,对于线性泊松神经元,慢变化学习可以通过具有特定学习窗口的尖峰时间依赖可塑性(STDP)来实现。通过研究STDP的学习动态,我们表明,对于STDP的功能解释,相关的不仅仅是学习窗口本身,而是学习窗口与突触后电位的卷积。然后,我们推导了实现慢特征分析和“追踪规则”的STDP学习窗口。所得的学习窗口在形状和时间尺度上均与生理数据兼容。此外,我们的分析表明,学习窗口可以分为两个功能不同的组件,分别对输入统计量的可逆和不可逆方面敏感。该理论表明,不可逆的输入统计不利于稳定的权重分布,但可能会产生振荡的权重动态。我们的分析为STDP在生理神经元中的功能作用提供了一种新颖的解释。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ea69/1904380/0303642ccc17/pcbi.0030112.g001.jpg

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