Department of Mathematics, University of Nebraska-Lincoln Lincoln, NE, USA.
Front Comput Neurosci. 2011 Oct 24;5:40. doi: 10.3389/fncom.2011.00040. eCollection 2011.
Networks with continuous set of attractors are considered to be a paradigmatic model for parametric working memory (WM), but require fine tuning of connections and are thus structurally unstable. Here we analyzed the network with ring attractor, where connections are not perfectly tuned and the activity state therefore drifts in the absence of the stabilizing stimulus. We derive an analytical expression for the drift dynamics and conclude that the network cannot function as WM for a period of several seconds, a typical delay time in monkey memory experiments. We propose that short-term synaptic facilitation in recurrent connections significantly improves the robustness of the model by slowing down the drift of activity bump. Extending the calculation of the drift velocity to network with synaptic facilitation, we conclude that facilitation can slow down the drift by a large factor, rendering the network suitable as a model of WM.
具有连续吸引子集的网络被认为是参数工作记忆 (WM) 的典范模型,但需要对连接进行精细调整,因此结构不稳定。在这里,我们分析了具有环形吸引子的网络,其中连接不是完全调整的,因此在没有稳定刺激的情况下,活动状态会漂移。我们推导出漂移动力学的解析表达式,并得出结论,该网络不能作为 WM 工作数秒,这是猴子记忆实验中的典型延迟时间。我们提出,在递归连接中,短期突触易化显著提高了模型的鲁棒性,减缓了活动峰的漂移。通过将漂移速度的计算扩展到具有突触易化的网络,我们得出结论,易化可以大大减缓漂移,使网络适合作为 WM 的模型。