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Geometrical methods for non-negative ICA: Manifolds, Lie groups and toral subalgebras

机译:非负ICA的几何方法:流形,李群和环代数

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We explore the use of geometrical methods to tackle the non-negative independent component analysis (non-negative ICA) problem, without assuming the reader has an existing background in differential geometry. We concentrate on methods that achieve this by minimizing a cost function over the space of orthogonal matrices. We introduce the idea of the manifold and Lie group SO(n) of special orthogonal matrices that we wish to search over, and explain how this is related to the Lie algebra so(n) of skew-symmetric matrices. We describe how familiar optimization methods such as steepest descent and conjugate gradients can be transformed into this Lie group setting, and how the Newton update step has an alternative Fourier version in SO(n). Finally, we introduce the concept of a toral subgroup generated by a particular element of the Lie group or Lie algebra, and explore how this commutative subgroup might be used to simplify searches on our constraint surface. No proofs are presented in this article.
机译:我们探索使用几何方法来解决非负独立分量分析(非负ICA)问题,而不假定读者具有差分几何的现有背景。我们专注于通过最小化正交矩阵空间上的成本函数来实现这一目标的方法。我们介绍了我们想要搜索的特殊正交矩阵的流形和李群SO(n)的概念,并解释了它与偏对称矩阵的李代数so(n)的关系。我们描述了如何将最熟悉的优化方法(例如最速下降和共轭梯度)转换为此Lie组设置,以及牛顿更新步骤如何在SO(n)中具有替代傅立叶版本。最后,我们介绍了由李群或李代数的特定元素生成的环式子群的概念,并探讨了该可交换子群如何可用于简化对约束面的搜索。本文未提供任何证据。

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