Kelleher K J, Hajdik V, Colbert C M, Josić K
Department of Biology and Biochemistry, University of Houston, Houston, TX 77204-5001, USA.
J Comput Neurosci. 2008 Oct;25(2):282-95. doi: 10.1007/s10827-008-0078-6. Epub 2008 Feb 14.
Changes in neural connectivity are thought to underlie the most permanent forms of memory in the brain. We consider two models, derived from the clusteron (Mel, Adv Neural Inf Process Syst 4:35-42, 1992), to study this method of learning. The models show a direct relationship between the speed of memory acquisition and the probability of forming appropriate synaptic connections. Moreover, the strength of learned associations grows with the number of fibers that have taken part in the learning process. We provide simple and intuitive explanations of these two results by analyzing the distribution of synaptic activations. The obtained insights are then used to extend the model to perform novel tasks: feature detection, and learning spatio-temporal patterns. We also provide an analytically tractable approximation to the model to put these observations on a firm basis. The behavior of both the numerical and analytical models correlate well with experimental results of learning tasks which are thought to require a reorganization of neuronal networks.
神经连接的变化被认为是大脑中最持久的记忆形式的基础。我们考虑从聚类神经元模型(梅尔,《神经信息处理系统进展》4:35 - 42,1992年)衍生出的两种模型来研究这种学习方法。这些模型显示了记忆获取速度与形成适当突触连接的概率之间的直接关系。此外,学习到的关联强度随着参与学习过程的纤维数量的增加而增长。通过分析突触激活的分布,我们对这两个结果给出了简单直观的解释。然后,利用获得的见解扩展模型以执行新任务:特征检测和学习时空模式。我们还为模型提供了一个易于分析处理的近似值,以使这些观察结果有坚实的基础。数值模型和分析模型的行为都与被认为需要神经元网络重组的学习任务的实验结果高度相关。