A dynamical system can be regarded as an information processing apparatus that encodes input streams from the external environment to its state and processes them through state transitions. The information processing capacity (IPC) is an excellent tool that comprehensively evaluates these processed inputs, providing details of unknown information processing in black box systems; however, this measure can be applied to only time-invariant systems. This paper extends the applicable range to time-variant systems and further reveals that the IPC is equivalent to coefficients of polynomial chaos (PC) expansion in more general dynamical systems. To achieve this objective, we tackle three issues. First, we establish a connection between the IPC for time-invariant systems and PC expansion, which is a type of polynomial expansion using orthogonal functions of input history as bases. We prove that the IPC corresponds to the squared norm of the coefficient vector of the basis in the PC expansion. Second, we show that an input following an arbitrary distribution can be used for the IPC, removing previous restrictions to specific input distributions. Third, we extend the conventional orthogonal bases to functions of both time and input history and propose the IPC for time-variant systems. To show the significance of our approach, we demonstrate that our measure can reveal information representations in not only machine learning networks but also a real, cultured neural network. Our generalized measure paves the way for unveiling the information processing capabilities of a wide variety of physical dynamics which has been left behind in nature.
翻译:动态系统可以被视为一种信息处理装置,将输入流从外部环境到其状态的输入流编码到其状态,并通过状态过渡进行处理。 信息处理能力(IPC)是一个极好的工具,可以全面评估这些经过处理的投入,在黑盒系统中提供未知的信息处理细节; 但是,这一措施只能适用于时间变化系统。 本文将适用范围扩大到时间变化系统, 并进一步显示, IPC相当于在更一般的动态系统中任意分配多元混乱(PC)扩展的系数。 为了实现这一目标, 我们处理三个问题。 首先, 我们把IPC的物理动态系统与PC的扩展联系起来, 这是一种使用输入历史基础的任意信息处理细节; 我们证明, IPC 与基准扩展中的系数矢量的正方标准相对应。 第二, 我们显示, 任意分配后的投入只能用于IPC, 取消先前对具体输入分布的限制。 第三, 我们将常规或内向后基基础的物理动态系统和 PC 扩展为时间变化网络的功能, 这是一种混合扩张, 使用输入历史历史基础的混合功能, 也显示我们历史的直径结构结构的显示我们历史结构的深度系统。