Grossberg Stephen
Department of Cognitive and Neural Systems, Center for Adaptive Systems, Boston University, 677 Beacon Street, Boston, MA 02215, USA.
Prog Brain Res. 2007;165:79-104. doi: 10.1016/S0079-6123(06)65006-1.
A key goal of computational neuroscience is to link brain mechanisms to behavioral functions. The present article describes recent progress towards explaining how laminar neocortical circuits give rise to biological intelligence. These circuits embody two new and revolutionary computational paradigms: Complementary Computing and Laminar Computing. Circuit properties include a novel synthesis of feedforward and feedback processing, of digital and analog processing, and of preattentive and attentive processing. This synthesis clarifies the appeal of Bayesian approaches but has a far greater predictive range that naturally extends to self-organizing processes. Examples from vision and cognition are summarized. A LAMINART architecture unifies properties of visual development, learning, perceptual grouping, attention, and 3D vision. A key modeling theme is that the mechanisms which enable development and learning to occur in a stable way imply properties of adult behavior. It is noted how higher-order attentional constraints can influence multiple cortical regions, and how spatial and object attention work together to learn view-invariant object categories. In particular, a form-fitting spatial attentional shroud can allow an emerging view-invariant object category to remain active while multiple view categories are associated with it during sequences of saccadic eye movements. Finally, the chapter summarizes recent work on the LIST PARSE model of cognitive information processing by the laminar circuits of prefrontal cortex. LIST PARSE models the short-term storage of event sequences in working memory, their unitization through learning into sequence, or list, chunks, and their read-out in planned sequential performance that is under volitional control. LIST PARSE provides a laminar embodiment of Item and Order working memories, also called Competitive Queuing models, that have been supported by both psychophysical and neurobiological data. These examples show how variations of a common laminar cortical design can embody properties of visual and cognitive intelligence that seem, at least on the surface, to be mechanistically unrelated.
计算神经科学的一个关键目标是将大脑机制与行为功能联系起来。本文描述了在解释层状新皮层回路如何产生生物智能方面的最新进展。这些回路体现了两种新的、革命性的计算范式:互补计算和层状计算。回路特性包括前馈和反馈处理、数字和模拟处理以及前注意和注意处理的新颖综合。这种综合阐明了贝叶斯方法的吸引力,但具有更广泛的预测范围,自然地扩展到自组织过程。总结了视觉和认知方面的例子。一个LAMINART架构统一了视觉发育、学习、知觉分组、注意力和三维视觉的特性。一个关键的建模主题是,使发育和学习以稳定方式发生的机制意味着成人行为的特性。文中指出了高阶注意力约束如何影响多个皮层区域,以及空间和物体注意力如何共同作用以学习视图不变的物体类别。特别是,一个贴合形状的空间注意力罩可以使一个新兴的视图不变物体类别在扫视眼动序列中与多个视图类别相关联时保持活跃。最后,本章总结了前额叶皮层层状回路对认知信息处理的LIST PARSE模型的最新研究。LIST PARSE对工作记忆中事件序列的短期存储、通过学习将它们统一为序列或列表块以及在意志控制下的计划顺序执行中的读出进行建模。LIST PARSE提供了项目和顺序工作记忆的层状体现,也称为竞争排队模型,这些模型已得到心理物理学和神经生物学数据的支持。这些例子表明,常见的层状皮层设计的变化如何能够体现视觉和认知智能的特性,这些特性至少在表面上似乎在机制上是不相关的。