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Complex infomax: convergence and approximation of infomax with complex nonlinearities

机译:复杂infomax:具有复杂非线性的infomax的收敛和逼近

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Independent component analysis (ICA) for separating complex-valued sources is needed for convolutive source-separation in the frequency domain, or for performing source separation on complex-valued data, such as functional magnetic resonance imaging data. Previous complex infomax approaches have proposed using bounded (and hence non-analytic) nonlinearities. We propose using an analytic (and hence unbounded) complex nonlinearity for infomax for processing complex-valued sources. We show that using an analytic nonlinearity for processing complex data has a number of advantages. First, when compared to split-complex approaches (i.e., approaches that split the real and imaginary data into separate channels), the shape of the performance surface is improved resulting in better convergence characteristics. Additionally, the computational complexity is significantly reduced, and finally, the presence of cross terms in the Jacobian enables the analytic nonlinearity to approximate a more general class of input distributions.
机译:为了在频域中进行卷积源分离,或对诸如功能磁共振成像数据之类的复值数据执行源分离,需要用于分离复值源的独立成分分析(ICA)。先前的复杂infomax方法已提出使用有界(因此是非分析性)非线性。我们建议对infomax使用解析(因此无界)的复杂非线性来处理复杂值源。我们证明了使用解析非线性处理复杂数据具有许多优点。首先,与拆分复杂方法(即,将实数和虚数数据拆分为单独的通道的方法)相比,性能表面的形状得到了改进,从而带来了更好的收敛特性。此外,计算复杂度大大降低,最后,雅可比行列中交叉项的存在使解析非线性能够近似更一般的输入分布类别。

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