独立分量分析的神经网络实现

R. Mutihac, M. Hulle
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引用次数: 9

摘要

采用平稳线性独立分量分析(ICA)模型,分析了6种结构不同的神经形态自适应算法在独立人工信号盲分离中的性能。对估计的独立分量进行评估和比较,目的是对神经ICA实现进行排序。所有算法都使用不同的对比函数运行,这些对比函数是在最大化网络输出的单个负熵之和的基础上进行优化选择的。数值模拟采用了亚高斯和超高斯一维时间序列。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neural network implementations of independent component analysis
The performance of six neuromorphic adaptive structurally different algorithms was analyzed in blind separation of independent artificially generated signals using the stationary linear independent component analysis (ICA) model. The estimated independent components were assessed and compared aiming to rank the neural ICA implementations. All algorithms were run with different contrast functions, which were optimally selected on the basis of maximizing the sum of individual negentropies of the network outputs. Both subGaussian and superGaussian one-dimensional time series were employed throughout the numerical simulations.
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