J Cogn Neurosci. 1992 Fall;4(4):323-36. doi: 10.1162/jocn.1992.4.4.323.
A fundamental observation in the neurosciences is that the brain is a modular system in which different regions perform different tasks. Recent evidence, however, raises questions about the accuracy of this characterization with respect to neo-nates. One possible interpretation of this evidence is that certain aspects of the modular organization of the adult brain arise developmentally. To explore this hypothesis we wish to characterize the computational principles that underlie the development of modular systems. In previous work we have considered computational schemes that allow a learning system to discover the modular structure that is present in the environment (Jacobs, Jordan, & Barto, 1991). In the current paper we present a complementary approach in which the development of modularity is due to an architectural bias in the learner. In particular, we examine the computational consequences of a simple architectural bias toward short-range connections. We present simulations that show that systems that learn under the influence of such a bias have a number of desirable properties, including a tendency to decompose tasks into subtasks, to decouple the dynamics of recurrent subsystems, and to develop location-sensitive internal representations. Furthermore, the system's units develop local receptive and projective fields, and the system develops characteristics that are typically associated with topographic maps.
神经科学的一个基本观察结果是,大脑是一个模块化系统,其中不同的区域执行不同的任务。然而,最近的证据对这种针对新生儿的特征描述的准确性提出了质疑。对这些证据的一种可能解释是,成年人大脑模块化组织的某些方面是在发育过程中产生的。为了探索这一假设,我们希望描述构成模块化系统发展的计算原理。在之前的工作中,我们已经考虑了允许学习系统发现环境中存在的模块化结构的计算方案(Jacobs、Jordan 和 Barto,1991)。在当前的论文中,我们提出了一种互补的方法,其中模块化的发展是由于学习者的体系结构偏差。具体来说,我们研究了偏向短程连接的简单体系结构偏差的计算后果。我们提出的模拟表明,在这种偏差的影响下学习的系统具有许多理想的特性,包括将任务分解为子任务的倾向、解耦递归子系统的动态以及开发位置敏感的内部表示的倾向。此外,系统的单元会发展局部感受野和投影野,系统会发展出通常与地形图相关的特征。