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首页> 外文期刊>Physica, D. Nonlinear phenomena >NONLINEAR INDEPENDENT COMPONENT ANALYSIS AND MULTIVARIATE TIME SERIES ANALYSIS
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NONLINEAR INDEPENDENT COMPONENT ANALYSIS AND MULTIVARIATE TIME SERIES ANALYSIS

机译:非线性独立分量分析和多元时间序列分析

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We derive an information-theory-based unsupervised learning paradigm for nonlinear independent component analysis (NICA) with neural networks. We demonstrate that under the constraint of bounded and invertible output transfer functions the two main goals of unsupervised learning, redundancy reduction and maximization of the transmitted information between input and output (Infomax-principle), are equivalent. No assumptions are made concerning the kind of input and output distributions, i.e. the kind of nonlinearity of correlations. An adapted version of the general NICA network is used for the modeling of multivariate time series by unsupervised learning. Given time series of various observables of a dynamical system, our net learns their evolution in time by extracting statistical dependencies between past and present elements of the time series. Multivariate modeling is obtained by making present value of each time series statistically independent not only from their own past but also from the past of the other series. Therefore, in contrast to univariate methods, the information lying in the couplings between the observables is also used and a detection of higher-order cross correlations is possible. We apply our method to time series of the two-dimensional Henon map and to experimental time series obtained from the measurements of axial velocities in different locations in weakly turbulent Taylor-Couette flow. [References: 32]
机译:我们为基于神经网络的非线性独立成分分析(NICA)导出了基于信息论的无监督学习范例。我们证明了在有界和可逆的输出传递函数的约束下,无监督学习的两个主要目标,冗余减少和输入与输出之间传递信息的最大化(Infomax原理)是等效的。对于输入和输出分布的类型,即相关性的非线性,不做任何假设。通用NICA网络的改编版本用于通过无监督学习对多元时间序列进行建模。给定动力学系统各种可观察到的时间序列,我们的网络通过提取时间序列的过去和现在元素之间的统计依存关系来了解它们的时间演化。通过使每个时间序列的现值在统计上不仅独立于它们自己的过去,而且还独立于其他序列的过去,来获得多变量建模。因此,与单变量方法相反,还使用位于可观察对象之间的耦合中的信息,并且可以检测高阶互相关。我们将我们的方法应用于二维Henon映射的时间序列以及从测量弱湍流泰勒-库埃特流中不同位置的轴向速度获得的实验时间序列。 [参考:32]

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