Földiák P
Physiological Laboratory, University of Cambridge, United Kingdom.
Biol Cybern. 1990;64(2):165-70. doi: 10.1007/BF02331346.
How does the brain form a useful representation of its environment? It is shown here that a layer of simple Hebbian units connected by modifiable anti-Hebbian feed-back connections can learn to code a set of patterns in such a way that statistical dependency between the elements of the representation is reduced, while information is preserved. The resulting code is sparse, which is favourable if it is to be used as input to a subsequent supervised associative layer. The operation of the network is demonstrated on two simple problems.
大脑是如何形成其环境的有用表征的?本文表明,由可修改的反赫布反馈连接相连的一层简单赫布单元能够学会以一种方式对一组模式进行编码,即减少表征元素之间的统计依赖性,同时保留信息。所得到的编码是稀疏的,如果将其用作后续监督联想层的输入,这是有利的。在两个简单问题上展示了该网络的运行情况。