Isomura Takuya, Kotani Kiyoshi, Jimbo Yasuhiko
Department of Human and Engineered Environmental Studies, Graduate School of Frontier Sciences, The University of Tokyo, Hongo, Bunkyo-ku, Tokyo, Japan.
Research Fellow of Japan Society for the Promotion of Science (JSPS), Kojimachi, Chiyoda-ku, Tokyo, Japan.
PLoS Comput Biol. 2015 Dec 21;11(12):e1004643. doi: 10.1371/journal.pcbi.1004643. eCollection 2015 Dec.
Blind source separation is the computation underlying the cocktail party effect--a partygoer can distinguish a particular talker's voice from the ambient noise. Early studies indicated that the brain might use blind source separation as a signal processing strategy for sensory perception and numerous mathematical models have been proposed; however, it remains unclear how the neural networks extract particular sources from a complex mixture of inputs. We discovered that neurons in cultures of dissociated rat cortical cells could learn to represent particular sources while filtering out other signals. Specifically, the distinct classes of neurons in the culture learned to respond to the distinct sources after repeating training stimulation. Moreover, the neural network structures changed to reduce free energy, as predicted by the free-energy principle, a candidate unified theory of learning and memory, and by Jaynes' principle of maximum entropy. This implicit learning can only be explained by some form of Hebbian plasticity. These results are the first in vitro (as opposed to in silico) demonstration of neural networks performing blind source separation, and the first formal demonstration of neuronal self-organization under the free energy principle.
盲源分离是鸡尾酒会效应背后的计算原理——参加派对的人能够从周围噪音中分辨出特定谈话者的声音。早期研究表明,大脑可能将盲源分离用作感官感知的一种信号处理策略,并且已经提出了许多数学模型;然而,神经网络如何从复杂的输入混合中提取特定源仍不清楚。我们发现,解离的大鼠皮质细胞培养物中的神经元能够学会在过滤掉其他信号的同时表征特定源。具体而言,培养物中不同类别的神经元在重复训练刺激后学会对不同源做出反应。此外,正如学习与记忆的候选统一理论——自由能原理以及杰恩斯最大熵原理所预测的那样,神经网络结构发生变化以降低自由能。这种内隐学习只能用某种形式的赫布可塑性来解释。这些结果是神经网络执行盲源分离的首个体外(而非计算机模拟)证明,也是自由能原理下神经元自组织的首个正式证明。