Neuroscience Graduate Program, University of Michigan, Ann Arbor, Michigan 48109, USA.
Department of Physics, University of Michigan, Ann Arbor, Michigan 48109, USA.
Phys Rev E. 2016 May;93(5):052307. doi: 10.1103/PhysRevE.93.052307. Epub 2016 May 13.
The brain can reproduce memories from partial data; this ability is critical for memory recall. The process of memory recall has been studied using autoassociative networks such as the Hopfield model. This kind of model reliably converges to stored patterns that contain the memory. However, it is unclear how the behavior is controlled by the brain so that after convergence to one configuration, it can proceed with recognition of another one. In the Hopfield model, this happens only through unrealistic changes of an effective global temperature that destabilizes all stored configurations. Here we show that spike-frequency adaptation (SFA), a common mechanism affecting neuron activation in the brain, can provide state-dependent control of pattern retrieval. We demonstrate this in a Hopfield network modified to include SFA, and also in a model network of biophysical neurons. In both cases, SFA allows for selective stabilization of attractors with different basins of attraction, and also for temporal dynamics of attractor switching that is not possible in standard autoassociative schemes. The dynamics of our models give a plausible account of different sorts of memory retrieval.
大脑可以从部分数据中重现记忆;这种能力对于记忆回忆至关重要。使用自联想网络(如 Hopfield 模型)研究了记忆回忆的过程。这种模型可靠地收敛到包含记忆的存储模式。然而,目前尚不清楚大脑是如何控制行为的,以便在收敛到一个配置后,它可以继续识别另一个配置。在 Hopfield 模型中,这仅通过不稳定所有存储配置的不切实际的有效全局温度变化来实现。在这里,我们表明,尖峰频率适应(SFA),一种影响大脑中神经元激活的常见机制,可以提供对模式检索的状态相关控制。我们在包含 SFA 的 Hopfield 网络中证明了这一点,也在生物物理神经元的模型网络中证明了这一点。在这两种情况下,SFA 允许不同吸引子的选择性稳定,并且还允许在标准自联想方案中不可能的吸引子切换的时间动态。我们的模型动力学为各种记忆检索提供了合理的解释。