Rolls E T, Stringer S M
Department of Experimental Psychology, Oxford University, UK.
Network. 2001 May;12(2):111-29.
It has been proposed that invariant pattern recognition might be implemented using a learning rule that utilizes a trace of previous neural activity which, given the spatio-temporal continuity of the statistics of sensory input, is likely to be about the same object though with differing transforms in the short time scale. Recently, it has been demonstrated that a modified Hebbian rule which incorporates a trace of previous activity but no contribution from the current activity can offer substantially improved performance. In this paper we show how this rule can be related to error correction rules, and explore a number of error correction rules that can be applied to and can produce good invariant pattern recognition. An explicit relationship to temporal difference learning is then demonstrated, and from this further learning rules related to temporal difference learning are developed. This relationship to temporal difference learning allows us to begin to exploit established analyses of temporal difference learning to provide a theoretical framework for better understanding the operation and convergence properties of these learning rules, and more generally, of rules useful for learning invariant representations. The efficacy of these different rules for invariant object recognition is compared using VisNet, a hierarchical competitive network model of the operation of the visual system.
有人提出,可以使用一种学习规则来实现不变模式识别,该规则利用先前神经活动的痕迹,鉴于感觉输入统计的时空连续性,尽管在短时间尺度上变换不同,但很可能是关于同一物体的。最近,已经证明,一种修改后的赫布规则,它结合了先前活动的痕迹但没有当前活动的贡献,可以提供显著提高的性能。在本文中,我们展示了这个规则如何与纠错规则相关联,并探索了一些可以应用于并能产生良好不变模式识别的纠错规则。然后证明了与时间差分学习的明确关系,并由此开发了与时间差分学习相关的进一步学习规则。这种与时间差分学习的关系使我们能够开始利用对时间差分学习的既定分析,为更好地理解这些学习规则以及更一般地对于学习不变表示有用的规则的操作和收敛特性提供一个理论框架。使用VisNet(一种视觉系统操作的分层竞争网络模型)比较了这些不同规则对不变物体识别的功效。