Stringer Simon M, Rolls Edmund T
Centre for Computational Neuroscience, Department of Experimental Psychology, Oxford University, South Parks Road, Oxford, UK.
Network. 2006 Dec;17(4):419-45. doi: 10.1080/09548980601004032.
A key issue is how networks in the brain learn to perform path integration, that is update a represented position using a velocity signal. Using head direction cells as an example, we show that a competitive network could self-organize to learn to respond to combinations of head direction and angular head rotation velocity. These combination cells can then be used to drive a continuous attractor network to the next head direction based on the incoming rotation signal. An associative synaptic modification rule with a short term memory trace enables preceding combination cell activity during training to be associated with the next position in the continuous attractor network. The network accounts for the presence of neurons found in the brain that respond to combinations of head direction and angular head rotation velocity. Analogous networks in the hippocampal system could self-organize to perform path integration of place and spatial view representations.
一个关键问题是大脑中的神经网络如何学会执行路径整合,即利用速度信号更新所表征的位置。以头部方向细胞为例,我们表明竞争网络可以自组织,学会对头部方向和头部角旋转速度的组合做出反应。然后,这些组合细胞可用于根据传入的旋转信号将连续吸引子网络驱动到下一个头部方向。具有短期记忆痕迹的联想突触修饰规则使训练期间先前的组合细胞活动能够与连续吸引子网络中的下一个位置相关联。该网络解释了大脑中发现的对头部方向和头部角旋转速度组合做出反应的神经元的存在。海马系统中的类似网络可以自组织以执行位置和空间视图表征的路径整合。