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An effective decoupling method for matrix optimization and its application to the ICA problem

机译:一种有效的矩阵优化解耦方法及其在ICA问题中的应用

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Matrix optimization of cost functions is a common problem. Construction of methods that enable each row or column to be individually optimized, i.e., decoupled, are desirable for a number of reasons. With proper decoupling, the convergence characteristics such as local stability can be improved. Decoupling can enable density matching in applications such as independent component analysis (ICA). Lastly, efficient Newton algorithms become tractable after decoupling. The most common method for decoupling rows is to reduce the optimization space to orthogonal matrices. Such restrictions can degrade performance. We present a decoupling procedure that uses standard vector optimization procedures while still admitting nonorthogonal solutions. We utilize the decoupling procedure to develop a new decoupled ICA algorithm that uses Newton optimization enabling superior performance when the sample size is limited.
机译:成本函数的矩阵优化是一个普遍的问题。出于多种原因,期望构造使每个行或列能够被单独优化,即解耦的方法。通过适当的去耦,可以改善收敛特性,例如局部稳定性。去耦可以在诸如独立成分分析(ICA)等应用中实现密度匹配。最后,高效的牛顿算法在解耦后变得易于处理。解耦行最常用的方法是将优化空间减少到正交矩阵。这样的限制会降低性能。我们提出了一种解耦程序,该程序使用标准向量优化程序,同时仍允许使用非正交解。我们利用去耦程序开发了一种新的去耦ICA算法,该算法使用牛顿优化技术,可在样本量有限的情况下实现出色的性能。

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