Granada Neurophysics Group at Institute "Carlos I" for Theoretical and Computational Physics, University of Granada Granada, Spain.
Front Comput Neurosci. 2013 Apr 5;7:30. doi: 10.3389/fncom.2013.00030. eCollection 2013.
In this paper we review our research on the effect and computational role of dynamical synapses on feed-forward and recurrent neural networks. Among others, we report on the appearance of a new class of dynamical memories which result from the destabilization of learned memory attractors. This has important consequences for dynamic information processing allowing the system to sequentially access the information stored in the memories under changing stimuli. Although storage capacity of stable memories also decreases, our study demonstrated the positive effect of synaptic facilitation to recover maximum storage capacity and to enlarge the capacity of the system for memory recall in noisy conditions. Possibly, the new dynamical behavior can be associated with the voltage transitions between up and down states observed in cortical areas in the brain. We investigated the conditions for which the permanence times in the up state are power-law distributed, which is a sign for criticality, and concluded that the experimentally observed large variability of permanence times could be explained as the result of noisy dynamic synapses with large recovery times. Finally, we report how short-term synaptic processes can transmit weak signals throughout more than one frequency range in noisy neural networks, displaying a kind of stochastic multi-resonance. This effect is due to competition between activity-dependent synaptic fluctuations (due to dynamic synapses) and the existence of neuron firing threshold which adapts to the incoming mean synaptic input.
在本文中,我们回顾了我们在动态突触对前馈和递归神经网络的作用和计算作用的研究。其中,我们报告了一类新的动态记忆的出现,这是由于学习记忆吸引子的不稳定性导致的。这对动态信息处理有重要影响,允许系统在刺激变化的情况下顺序访问存储在记忆中的信息。尽管稳定记忆的存储容量也会降低,但我们的研究表明,突触易化对恢复最大存储容量和扩大系统在噪声条件下的记忆召回能力有积极作用。可能,这种新的动力学行为可以与大脑皮层区域中观察到的电压在上升和下降状态之间的转变相关联。我们研究了持久性时间在幂律分布的条件,这是临界性的标志,并得出结论,实验观察到的持久性时间的大变化性可以解释为具有大恢复时间的噪声动态突触的结果。最后,我们报告了短期突触过程如何在噪声神经网络中通过多个频率范围传输弱信号,显示出一种随机多共振。这种效应是由于活动相关的突触波动(由于动态突触)和神经元发射阈值的存在之间的竞争引起的,神经元发射阈值适应输入的平均突触输入。