Department of Automatic Control and Systems Engineering, University of Sheffield, Sheffield, S1 3JD, U.K.
Neural Comput. 2019 Sep;31(9):1825-1852. doi: 10.1162/neco_a_01218. Epub 2019 Jul 23.
There is extensive evidence that biological neural networks encode information in the precise timing of the spikes generated and transmitted by neurons, which offers several advantages over rate-based codes. Here we adopt a vector space formulation of spike train sequences and introduce a new liquid state machine (LSM) network architecture and a new forward orthogonal regression algorithm to learn an input-output signal mapping or to decode the brain activity. The proposed algorithm uses precise spike timing to select the presynaptic neurons relevant to each learning task. We show that using precise spike timing to train the LSM and selecting the readout presynaptic neurons leads to a significant increase in performance on binary classification tasks, in decoding neural activity from multielectrode array recordings, as well as in a speech recognition task, compared with what is achieved using the standard architecture and training methods.
有大量证据表明,生物神经网络将信息编码在神经元产生和传输的尖峰的精确时间上,这比基于速率的代码具有几个优势。在这里,我们采用尖峰序列的向量空间表示,并引入新的液体状态机(LSM)网络架构和新的前向正交回归算法来学习输入-输出信号映射或解码大脑活动。所提出的算法使用精确的尖峰时间来选择与每个学习任务相关的前突神经元。我们表明,使用精确的尖峰时间来训练 LSM 并选择读出前突神经元可显著提高二进制分类任务的性能,从多电极阵列记录中解码神经活动,以及在语音识别任务中,与使用标准架构和训练方法相比。