Shriki Oren, Yellin Dovi
Department of Cognitive and Brain Sciences, Ben-Gurion University of the Negev, Beer-Sheva, Israel.
Department of Computer Science, Ben-Gurion University of the Negev, Beer-Sheva, Israel.
PLoS Comput Biol. 2016 Feb 16;12(2):e1004698. doi: 10.1371/journal.pcbi.1004698. eCollection 2016 Feb.
Recurrent connections play an important role in cortical function, yet their exact contribution to the network computation remains unknown. The principles guiding the long-term evolution of these connections are poorly understood as well. Therefore, gaining insight into their computational role and into the mechanism shaping their pattern would be of great importance. To that end, we studied the learning dynamics and emergent recurrent connectivity in a sensory network model based on a first-principle information theoretic approach. As a test case, we applied this framework to a model of a hypercolumn in the visual cortex and found that the evolved connections between orientation columns have a "Mexican hat" profile, consistent with empirical data and previous modeling work. Furthermore, we found that optimal information representation is achieved when the network operates near a critical point in its dynamics. Neuronal networks working near such a phase transition are most sensitive to their inputs and are thus optimal in terms of information representation. Nevertheless, a mild change in the pattern of interactions may cause such networks to undergo a transition into a different regime of behavior in which the network activity is dominated by its internal recurrent dynamics and does not reflect the objective input. We discuss several mechanisms by which the pattern of interactions can be driven into this supercritical regime and relate them to various neurological and neuropsychiatric phenomena.
递归连接在皮层功能中起着重要作用,但其对网络计算的确切贡献仍不清楚。指导这些连接长期演化的原理也知之甚少。因此,深入了解它们的计算作用以及塑造其模式的机制将非常重要。为此,我们基于第一性原理信息论方法,研究了一个感觉网络模型中的学习动态和涌现的递归连接性。作为一个测试案例,我们将这个框架应用于视觉皮层中一个超柱的模型,发现方向柱之间演化出的连接具有“墨西哥帽”轮廓,这与经验数据和先前的建模工作一致。此外,我们发现当网络在其动态的临界点附近运行时,能实现最优的信息表示。在这样的相变附近工作的神经网络对其输入最为敏感,因此在信息表示方面是最优的。然而,相互作用模式的轻微变化可能会导致这样的网络转变为不同的行为模式,在这种模式下,网络活动由其内部递归动态主导,而不反映客观输入。我们讨论了几种可以将相互作用模式驱动到这种超临界状态的机制,并将它们与各种神经学和神经精神现象联系起来。