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A New Probabilistic Approach to Independent Component Analysis Suitable for On-Line Learning in Artificial Neural Networks

机译:适用于人工神经网络在线学习的独立成分分析的新概率方法

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Recently, elements of probabilistic model that are suitable for modeling of learning algorithms in biologically plausible artificial neural networks framework, have been introduced. Model was based on two of the main concepts in quantum physics - a density matrix and the Born rule. In this paper we will show that proposed probabilistic interpretation is suitable for modeling of on-line learning algorithms for Independent Component Analysis (ICA), which could be realized on parallel hardware based on very simple computational units. Proposed concept (model) can be used in the context of improving algorithm convergence speed, learning factor choice, input signal scale robustness, and can be easily deployed on parallel hardware.
机译:最近,已经引入了概率模型的要素,该要素适合于在生物学上合理的人工神经网络框架中对学习算法进行建模。模型基于量子物理学中的两个主要概念-密度矩阵和伯恩定律。在本文中,我们将表明,所提出的概率解释适合用于独立成分分析(ICA)的在线学习算法建模,该算法可以在基于非常简单的计算单元的并行硬件上实现。提出的概念(模型)可以用于提高算法收敛速度,学习因子选择,输入信号规模鲁棒性的背景下,并且可以轻松地部署在并行硬件上。

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