School of Engineering and Science, Jacobs University Bremen gGmbH, 28759 Bremen, Germany.
Neural Comput. 2013 Mar;25(3):671-96. doi: 10.1162/NECO_a_00411. Epub 2012 Dec 28.
The echo state property is a key for the design and training of recurrent neural networks within the paradigm of reservoir computing. In intuitive terms, this is a passivity condition: a network having this property, when driven by an input signal, will become entrained by the input and develop an internal response signal. This excited internal dynamics can be seen as a high-dimensional, nonlinear, unique transform of the input with a rich memory content. This view has implications for understanding neural dynamics beyond the field of reservoir computing. Available definitions and theorems concerning the echo state property, however, are of little practical use because they do not relate the network response to temporal or statistical properties of the driving input. Here we present a new definition of the echo state property that directly connects it to such properties. We derive a fundamental 0-1 law: if the input comes from an ergodic source, the network response has the echo state property with probability one or zero, independent of the given network. Furthermore, we give a sufficient condition for the echo state property that connects statistical characteristics of the input to algebraic properties of the network connection matrix. The mathematical methods that we employ are freshly imported from the young field of nonautonomous dynamical systems theory. Since these methods are not yet well known in neural computation research, we introduce them in some detail. As a side story, we hope to demonstrate the eminent usefulness of these methods.
反射状态属性是储层计算范例中设计和训练递归神经网络的关键。从直观上讲,这是一个被动条件:当网络受到输入信号驱动时,具有此属性的网络将被输入信号所带动,并产生内部响应信号。这种被激发的内部动力学可以被看作是输入的高维、非线性、独特变换,具有丰富的记忆内容。这种观点对于理解储层计算领域之外的神经动力学具有重要意义。然而,现有的关于反射状态属性的定义和定理几乎没有实际用途,因为它们没有将网络响应与输入的时间或统计性质联系起来。在这里,我们提出了一个新的反射状态属性定义,它直接将其与这些属性联系起来。我们推导出一个基本的 0-1 定律:如果输入来自遍历源,则网络响应具有反射状态属性的概率为一或零,与给定的网络无关。此外,我们给出了一个反射状态属性的充分条件,将输入的统计特性与网络连接矩阵的代数特性联系起来。我们所采用的数学方法是从非自治动力系统理论这一新兴领域中刚刚引入的。由于这些方法在神经计算研究中还不为人知,我们将详细介绍它们。作为一个附带的故事,我们希望展示这些方法的显著有用性。