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Spike timing-dependent conduction delay learning model classifying spatio-temporal spike patterns

机译:穗时间相关的传导延迟学习模型对时空穗模式进行分类

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Precise spike timing is considered to play a fundamental role in communication and signal processing in biological neural networks. Understanding such mechanism contributes to both deep understanding of biological system and development of engineering applications such as efficient computational architectures. However, the biological mechanism which adjusts and maintains the spike timing still remains unclear. Previous studies have proposed algorithms adjusting synaptic efficacy and axonal conduction delay so that the spike timings get close to the desired spike timings in supervised manner. Supervised learning always requires desired spike timings as teacher signal, and thus it should not be dominant in biological system, which is considered to adapt to environment without teacher. This study proposes a spike timing-dependent learning model adjusting synaptic efficacy and axonal conduction delay in both unsupervised and supervised manners. The proposed learning algorithm approximates Expectation-Maximization algorithm and can classify the input data coded into spatio-temporal spike patterns. Furthermore, the proposed learning algorithm agrees with various results of existing biological experiments such as spike timing-dependent plasticity, and therefore it could be a good candidate of a model of biological delay learning.
机译:精确的尖峰定时被认为在生物神经网络中的通信和信号处理中起着基本作用。理解这种机制有助于对生物学系统的深入理解和工程应用程序的开发,例如高效的计算体系结构。然而,调节和维持尖峰时间的生物学机制仍然不清楚。先前的研究提出了调节突触功效和轴突传导延迟的算法,以使尖峰时间以有监督的方式接近所需的尖峰时间。监督学习总是需要期望的尖峰时间作为教师信号,因此它不应在生物系统中占主导地位,而生物学系统被认为可以在没有教师的情况下适应环境。这项研究提出了一种以尖峰时间为依托的学习模型,该模型以无监督和有监督的方式调节突触功效和轴突传导延迟。所提出的学习算法近似期望最大化算法,并且可以将编码为时空峰值模式的输入数据分类。此外,所提出的学习算法与现有的生物学实验的各种结果相符,例如与峰值时间相关的可塑性,因此它可能是生物学延迟学习模型的良好候选者。

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