Greve Andrea, Sterratt David C, Donaldson David I, Willshaw David J, van Rossum Mark C W
Doctoral Training Centre for Neuroinformatics, School of Informatics, University of Edinburgh, 5 Forrest Hill, Edinburgh, EH1 2QL, UK.
Biol Cybern. 2009 Jan;100(1):11-9. doi: 10.1007/s00422-008-0275-4. Epub 2008 Nov 12.
It has been suggested that the mammalian memory system has both familiarity and recollection components. Recently, a high-capacity network to store familiarity has been proposed. Here we derive analytically the optimal learning rule for such a familiarity memory using a signal- to-noise ratio analysis. We find that in the limit of large networks the covariance rule, known to be the optimal local, linear learning rule for pattern association, is also the optimal learning rule for familiarity discrimination. In the limit of large networks, the capacity is independent of the sparseness of the patterns and the corresponding information capacity is 0.057 bits per synapse, which is somewhat less than typically found for associative networks.
有人提出哺乳动物的记忆系统同时具有熟悉度和回忆成分。最近,有人提出了一种用于存储熟悉度的高容量网络。在此,我们通过信噪比分析解析得出这种熟悉度记忆的最优学习规则。我们发现,在大型网络的极限情况下,协方差规则(已知是用于模式关联的最优局部线性学习规则)也是用于熟悉度辨别(区分)的最优学习规则。在大型网络的极限情况下,容量与模式的稀疏度无关,且相应的信息容量为每个突触0.057比特,这略低于关联网络通常的信息容量。