Faculty of Life Sciences, University of Manchester, Manchester, UK.
Neural Netw. 2010 Aug;23(6):713-27. doi: 10.1016/j.neunet.2010.05.008. Epub 2010 Jun 12.
Population coding is the quantitative study of which algorithms or representations are used by the brain to combine together and evaluate the messages carried by different neurons. Here, we review an information-theoretic approach to population coding. We first discuss how to compute the information carried by simultaneously recorded neural populations, and in particular how to reduce the limited sampling bias which affects the calculation of information from a limited amount of experimental data. We then discuss how to quantify the contribution of individual members of the population, or the interaction between them, to the overall information encoded by the considered group of neurons. We focus in particular on evaluating what is the contribution of interactions up to any given order to the total information. We illustrate this formalism with applications to simulated data with realistic neuronal statistics and to real simultaneous recordings of multiple spike trains.
群体编码是对大脑用于组合和评估不同神经元所携带信息的算法或表示的定量研究。在这里,我们回顾了一种群体编码的信息论方法。我们首先讨论如何计算同时记录的神经元群体所携带的信息,特别是如何减少影响从有限数量的实验数据计算信息的有限采样偏差。然后,我们讨论如何量化群体中个体成员的贡献,或它们之间的相互作用,对所考虑的神经元群体编码的整体信息的贡献。我们特别关注评估任意阶次的相互作用对总信息量的贡献。我们用具有实际神经元统计特性的模拟数据和多个尖峰轨迹的实时同时记录的应用来说明这个形式。