Shine James M, Li Mike, Koyejo Oluwasanmi, Fulcher Ben, Lizier Joseph T
Centre for Complex Systems, The University of Sydney, Camperdown, NSW, 2006, Australia.
Brain and Mind Centre, The University of Sydney, Camperdown, NSW, 2050, Australia.
Brain Inform. 2021 Dec 2;8(1):26. doi: 10.1186/s40708-021-00147-z.
Here, we combine network neuroscience and machine learning to reveal connections between the brain's network structure and the emerging network structure of an artificial neural network. Specifically, we train a shallow, feedforward neural network to classify hand-written digits and then used a combination of systems neuroscience and information-theoretic tools to perform 'virtual brain analytics' on the resultant edge weights and activity patterns of each node. We identify three distinct phases of network reconfiguration across learning, each of which are characterized by unique topological and information-theoretic signatures. Each phase involves aligning the connections of the neural network with patterns of information contained in the input dataset or preceding layers (as relevant). We also observe a process of low-dimensional category separation in the network as a function of learning. Our results offer a systems-level perspective of how artificial neural networks function-in terms of multi-stage reorganization of edge weights and activity patterns to effectively exploit the information content of input data during edge-weight training-while simultaneously enriching our understanding of the methods used by systems neuroscience.
在此,我们将网络神经科学与机器学习相结合,以揭示大脑网络结构与人工神经网络新兴网络结构之间的联系。具体而言,我们训练一个浅层前馈神经网络对手写数字进行分类,然后使用系统神经科学和信息论工具的组合,对每个节点的最终边权重和活动模式进行“虚拟大脑分析”。我们识别出学习过程中网络重新配置的三个不同阶段,每个阶段都具有独特的拓扑和信息论特征。每个阶段都涉及将神经网络的连接与输入数据集或前一层(如相关)中包含的信息模式对齐。我们还观察到网络中作为学习函数的低维类别分离过程。我们的结果从系统层面提供了关于人工神经网络如何运作的视角——即边权重和活动模式的多阶段重组,以便在边权重训练期间有效利用输入数据的信息内容——同时丰富了我们对系统神经科学所使用方法的理解。