Reservoir computing is a machine learning paradigm that transforms the transient dynamics of high-dimensional nonlinear systems for processing time-series data. Although reservoir computing was initially proposed to model information processing in the mammalian cortex, it remains unclear how the non-random network architecture, such as the modular architecture, in the cortex integrates with the biophysics of living neurons to characterize the function of biological neuronal networks (BNNs). Here, we used optogenetics and fluorescent calcium imaging to record the multicellular responses of cultured BNNs and employed the reservoir computing framework to decode their computational capabilities. Micropatterned substrates were used to embed the modular architecture in the BNNs. We first show that modular BNNs can be used to classify static input patterns with a linear decoder and that the modularity of the BNNs positively correlates with the classification accuracy. We then used a timer task to verify that BNNs possess a short-term memory of ~1 s and finally show that this property can be exploited for spoken digit classification. Interestingly, BNN-based reservoirs allow transfer learning, wherein a network trained on one dataset can be used to classify separate datasets of the same category. Such classification was not possible when the input patterns were directly decoded by a linear decoder, suggesting that BNNs act as a generalization filter to improve reservoir computing performance. Our findings pave the way toward a mechanistic understanding of information processing within BNNs and, simultaneously, build future expectations toward the realization of physical reservoir computing systems based on BNNs.
翻译:储量计算是一种机器学习模式,它改变了用于处理时间序列数据的高维非线性非线性系统瞬时动态。虽然最初提议储油层计算在哺乳动物皮层中建模信息处理模型,但仍不清楚非随机网络架构,例如模块结构,在皮层中,模块型网络架构如何与活神经元的生物物理整合,以描述生物神经网络(BNN)的功能。在这里,我们利用随机基因和荧光钙成像来记录培养的BNN的多细胞反应,并使用储油层计算框架来解解码其计算能力。微调型子串联用于将模块结构嵌入BNN,我们首先显示模块型网络的模块型结构可以用线性解码对静输入模式进行分类,而BNNN的模块与分类的精确性关系是积极的。我们随后使用定时器任务来核查BNN的短期存储存储存储存储和最终显示,这一属性可以被利用来解算出它们的计算能力。 有趣的BNNN储数据库在直接的网络上进行一项在线数据分类, 将数据分类,而BNNNC型数据库的分类则可以直接地将这种数据转换成一种在线数据转换成一种在线的计算。