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Parametrization of Linear Systems Using Diffusion Kernels

机译:使用扩散核的线性系统的参数化

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摘要

Modeling natural and artificial systems has played a key role in various applications and has long been a task that has drawn enormous efforts. In this work, instead of exploring predefined models, we aim to identify implicitly the system degrees of freedom. This approach circumvents the dependency of a specific predefined model for a specific task or system and enables a generic data-driven method to characterize a system based solely on its output observations. We claim that each system can be viewed as a black box controlled by several independent parameters. Moreover, we assume that the perceptual characterization of the system output is determined by these independent parameters. Consequently, by recovering the independent controlling parameters, we find in fact a generic model for the system. In this work, we propose a supervised algorithm to recover the controlling parameters of natural and artificial linear systems. The proposed algorithm relies on nonlinear independent component analysis using diffusion kernels and spectral analysis. Employment of the proposed algorithm on both synthetic and practical examples has shown accurate recovery of parameters.
机译:对自然系统和人工系统进行建模已在各种应用程序中发挥了关键作用,并且长期以来一直是一项艰巨的任务,需要付出巨大的努力。在这项工作中,我们没有探究预定义的模型,而是旨在隐式地确定系统的自由度。这种方法规避了特定预定义模型对特定任务或系统的依赖性,并使通用的数据驱动方法可以仅基于其输出观察来表征系统。我们声称,每个系统都可以看作是由几个独立参数控制的黑匣子。此外,我们假设系统输出的感知特性由这些独立的参数确定。因此,通过恢复独立的控制参数,我们实际上发现了该系统的通用模型。在这项工作中,我们提出了一种监督算法来恢复自然和人工线性系统的控制参数。所提出的算法依赖于使用扩散核和光谱分析的非线性独立分量分析。在综合实例和实际实例上使用提出的算法已显示出参数的准确恢复。

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