Department of Statistics, University of Glasgow, Glasgow, G12 8QQ, UK.
Bull Math Biol. 2011 Feb;73(2):344-72. doi: 10.1007/s11538-010-9564-x. Epub 2010 Sep 4.
Signal processing in the cerebral cortex is thought to involve a common multi-purpose algorithm embodied in a canonical cortical micro-circuit that is replicated many times over both within and across cortical regions. Operation of this algorithm produces widely distributed but coherent and relevant patterns of activity. The theory of Coherent Infomax provides a formal specification of the objectives of such an algorithm. It also formally derives specifications for both the short-term processing dynamics and for the learning rules whereby the connection strengths between units in the network can be adapted to the environment in which the system finds itself. A central assumption of the theory is that the local processors can combine reliable signal coding with flexible use of those codes because they have two classes of synaptic connection: driving connections which specify the information content of the neural signals, and contextual connections which modulate that signal processing. Here, we make the biological relevance of this theory more explicit by putting more emphasis upon the contextual guidance of ongoing processing, by showing that Coherent Infomax is consistent with a particular Bayesian interpretation for the contextual guidance of learning and processing, by explicitly specifying rules for on-line learning, and by suggesting approximations by which the learning rules can be made computationally feasible within systems composed of very many local processors.
大脑皮层中的信号处理被认为涉及一种普遍的多用途算法,该算法体现在一个规范的皮层微电路中,该微电路在皮层区域内和区域之间被多次复制。该算法的操作产生了广泛分布但相干和相关的活动模式。相干信息最大化理论为这种算法的目标提供了正式的规范。它还正式推导出了短期处理动力学的规范,以及学习规则的规范,通过这些规则,网络中单元之间的连接强度可以适应系统所处的环境。该理论的一个核心假设是,局部处理器可以将可靠的信号编码与这些编码的灵活使用结合起来,因为它们具有两类突触连接:驱动连接,指定神经信号的信息量,以及上下文连接,调节该信号处理。在这里,我们通过更强调正在进行的处理的上下文引导,通过表明相干信息最大化与学习和处理的上下文引导的特定贝叶斯解释一致,通过明确指定在线学习规则,并通过建议近似值,使学习规则在由非常多的局部处理器组成的系统中具有计算可行性,从而使该理论具有更强的生物学相关性。