Spratling M W
Division of Informatics, University of Edinburgh, UK.
Network. 1999 Nov;10(4):285-301.
Unsupervised learning is an important ability of the brain and of many artificial neural networks. A large variety of unsupervised learning algorithms have been proposed. This paper takes a different approach in considering the architecture of the neural network rather than the learning algorithm. It is shown that a self-organizing neural network architecture using pre-synaptic lateral inhibition enables a single learning algorithm to find distributed, local, and topological representations as appropriate to the structure of the input data received. It is argued that such an architecture not only has computational advantages but is a better model of cortical self-organization.
无监督学习是大脑以及许多人工神经网络的一项重要能力。人们已经提出了各种各样的无监督学习算法。本文采用了一种不同的方法,即考虑神经网络的架构而非学习算法。结果表明,一种使用突触前侧抑制的自组织神经网络架构能够使单一学习算法根据接收到的输入数据的结构找到合适的分布式、局部和拓扑表示。有人认为,这样的架构不仅具有计算优势,而且是皮层自组织的更好模型。