Bersini Hugues, Sener Pierre
IRIDIA-CP 19416, Université Libre de Bruxelles, Belgium.
Neural Netw. 2002 Dec;15(10):1197-204. doi: 10.1016/s0893-6080(02)00096-5.
In a previous paper we introduced the notion of frustrated chaos occurring in Hopfield networks [Neural Networks 11 (1998) 1017]. It is a dynamical regime which appears in a network when the global structure is such that local connectivity patterns responsible for stable oscillatory behaviors are intertwined, leading to mutually competing attractors and unpredictable itinerancy among brief appearance of these attractors. Frustration destabilizes the network and provokes an erratic 'wavering' among the orbits that characterize the same network when it is connected in a non-frustrated way. In this paper, through a detailed study of the bifurcation diagram given for some connection weights, we will show that this frustrated chaos belongs to the family of intermittency type of chaos, first described by Berge et al. [Order within chaos (1984)] and Pomeau and Manneville [Commun. Math. Phys. 74 (1980) 189]. Indeed, the transition to chaos is a critical one, and all along the bifurcation diagram, in any chaotic window, the duration of the intermittent cycles, between two chaotic bursts, grows as an invert ratio of the connection weight. Specific to this regime are the intermittent cycles easily identifiable as the non-frustrated regimes obtained by altering the values of these same connection weights. We will more specifically show that anywhere in the bifurcation diagram, a chaotic window always lies between two oscillatory regimes, and that the resulting chaos is a merging of, among others, the cycles at both ends. The strength (i.e. the duration of its oscillatory phase before the chaotic burst) of the first cycle decreases while the regime tends to stabilize into the second cycle (with the strength of this second cycle increasing) that will finally get the control. Since in our study, the bifurcation diagram concerns the same connection weights responsible for the learning mechanism of the Hopfield network, we will discuss the relations existing between bifurcation, learning and control of chaos. We will show that, in some cases, the addition of a slower Hebbian learning mechanism onto the Hopfield networks makes the resulting global dynamics to drive the network into a stable oscillatory regime, through a succession of intermittent and quasiperiodic regimes. Finally, we will present a series of possible logical steps to manually construct a frustrated network.
在之前的一篇论文中,我们引入了霍普菲尔德网络中出现的受挫混沌的概念[《神经网络》11 (1998) 1017]。这是一种动力学状态,当网络的全局结构使得负责稳定振荡行为的局部连接模式相互交织时,就会在网络中出现,从而导致相互竞争的吸引子以及这些吸引子短暂出现时的不可预测的游走。受挫使网络不稳定,并在以非受挫方式连接时表征同一网络的轨道之间引发不稳定的“摇摆”。在本文中,通过对一些连接权重给出的分岔图进行详细研究,我们将表明这种受挫混沌属于间歇性混沌类型,最初由伯热等人[《混沌中的秩序》(1984)]以及庞梅奥和曼内维尔[《数学物理通讯》74 (1980) 189]所描述。实际上,向混沌的转变是一个临界转变,并且在整个分岔图中,在任何混沌窗口内,两次混沌爆发之间的间歇性周期的持续时间随着连接权重的倒数而增长。这种状态的特点是间歇性周期很容易被识别为通过改变相同连接权重的值而获得的非受挫状态。我们将更具体地表明,在分岔图的任何位置,一个混沌窗口总是位于两个振荡状态之间,并且由此产生的混沌是两端周期等的合并。当系统趋于稳定到最终占主导的第二个周期(第二个周期的强度增加)时,第一个周期的强度(即混沌爆发前其振荡阶段的持续时间)会减小。由于在我们的研究中,分岔图涉及负责霍普菲尔德网络学习机制的相同连接权重,我们将讨论分岔、学习和混沌控制之间存在的关系。我们将表明,在某些情况下,在霍普菲尔德网络上添加一个较慢的赫布学习机制会使由此产生的全局动力学通过一系列间歇性和准周期性状态将网络驱动到一个稳定的振荡状态。最后,我们将提出一系列可能的逻辑步骤来手动构建一个受挫网络。