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Nonparametric independent process analysis

机译:非参数独立过程分析

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Linear dynamical systems are widely used tools to model stochastic time processes, but they have severe limitations; they assume linear dynamics with Gaussian driving noise. Independent component analysis (ICA) aims to weaken these limitations by allowing independent, non-Gaussian sources in the model. Independent subspace analysis (ISA), an important generalization of ICA, has proven to be successful in many source separation applications. Still, the general ISA problem of separating sources with nonparametric dynamics has been hardly touched in the literature yet. The goal of this paper is to extend ISA to the case of (i) nonparametric, asymptotically stationary source dynamics and (ii) unknown source component dimensions. We make use of functional autoregressive (fAR) processes to model the temporal evolution of the hidden sources. An extension of the well-known ISA separation principle is derived for the solution of the introduced fAR independent process analysis (fAR-IPA) task. By applying fAR identification we reduce the problem to ISA. The Nadaraya-Watson kernel regression technique is adapted to obtain strongly consistent fAR estimation. We illustrate the efficiency of the fAR-IPA approach by numerical examples and demonstrate that in this framework our method is superior to standard linear dynamical system based estimators.
机译:线性动力学系统是用来对随机时间过程进行建模的广泛使用的工具,但是它们具有严重的局限性。他们假设线性动力学具有高斯驱动噪声。独立成分分析(ICA)旨在通过允许模型中使用独立的非高斯源来削弱这些限制。独立子空间分析(ISA)是ICA的重要概括,已证明在许多源分离应用程序中都是成功的。尽管如此,文献中几乎没有涉及到一般的ISA问题,即用非参数动力学分离源。本文的目的是将ISA扩展到(i)非参数渐近平稳源动力学和(ii)未知源组件尺寸的情况。我们利用功能自回归(fAR)流程对隐藏源的时间演化进行建模。对引入的fAR独立过程分析(fAR-IPA)任务的解决方案派生了众所周知的ISA分离原理的扩展。通过应用fAR识别,我们可以将问题减少到ISA。 Nadaraya-Watson核回归技术适用于获得高度一致的fAR估计。我们通过数值示例来说明fAR-IPA方法的效率,并证明在此框架中,我们的方法优于基于标准线性动力系统的估计器。

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