Zhou Qingguo, Jin Tao, Zhao Hong
School of Information Science and Engineer, Lanzhou University, and Engineering Research Center of Open Source Software and Realtime Operating System, Ministry of Education, Lanzhou 730000, PRC.
Neural Comput. 2009 Oct;21(10):2931-41. doi: 10.1162/neco.2009.12-07-671.
This letter presents a study of the correlation between the eigenvalue spectra of synaptic matrices and the dynamical properties of asymmetric neural networks with associative memories. For this type of neural network, it was found that there are essentially two different dynamical phases: the chaos phase, with almost all trajectories converging to a single chaotic attractor, and the memory phase, with almost all trajectories being attracted toward fixed-point attractors acting as memories. We found that if a neural network is designed in the chaos phase, the eigenvalue spectrum of its synaptic matrix behaves like that of a random matrix (i.e., all eigenvalues lie uniformly distributed within a circle in the complex plan), and if it is designed in the memory phase, the eigenvalue spectrum will split into two parts: one part corresponds to a random background, the other part equal in number to the memory attractors. The mechanism for these phenomena is discussed in this letter.
这封信展示了一项关于突触矩阵的特征值谱与具有联想记忆的非对称神经网络动力学特性之间相关性的研究。对于这类神经网络,发现本质上存在两个不同的动力学阶段:混沌阶段,几乎所有轨迹都收敛到单个混沌吸引子;记忆阶段,几乎所有轨迹都被吸引到作为记忆的定点吸引子。我们发现,如果神经网络设计在混沌阶段,其突触矩阵的特征值谱表现得像随机矩阵的特征值谱(即所有特征值在复平面的一个圆内均匀分布),而如果设计在记忆阶段,特征值谱将分裂为两部分:一部分对应随机背景,另一部分数量与记忆吸引子相等。本文讨论了这些现象的机制。