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An online Hebbian learning rule that performs Independent Component Analysis

机译:进行独立成分分析的在线Hebbian学习规则

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Independent component analysis (ICA) is a powerful method to decouple signals. Most of the algorithms performing ICA do not consider the temporal correlations of the signal, but only higher moments of its amplitude distribution. Moreover, they require some preprocessing of the data (whitening) so as to remove second order correlations. In this paper, we are interested in understanding the neural mechanism responsible for solving ICA. We present an online learning rule that exploits delayed correlations in the input. This rule performs ICA by detecting joint variations in the firing rates of pre-and postsynaptic neurons, similar to a local rate-based Hebbian learning rule.
机译:独立分量分析(ICA)是一种去耦信号的强大方法。大多数执行ICA的算法不考虑信号的时间相关性,而只考虑其幅度分布的较高矩。此外,它们需要对数据进行一些预处理(白化),以消除二阶相关性。在本文中,我们有兴趣了解负责解决ICA的神经机制。我们提出了一种在线学习规则,该规则利用了输入中的延迟相关性。该规则通过检测突触前和突触后神经元放电速率的联合变化来执行ICA,类似于基于局部速率的Hebbian学习规则。

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