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Regularized Generalized Canonical Correlation Analysis: A Framework for Sequential Multiblock Component Methods

机译:正常化的广义规范相关分析:顺序多块组件方法的框架

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摘要

A new framework for sequential multiblock component methods is presented. This framework relies on a new version of regularized generalized canonical correlation analysis (RGCCA) where various scheme functions and shrinkage constants are considered. Two types of between block connections are considered: blocks are either fully connected or connected to the superblock (concatenation of all blocks). The proposed iterative algorithm is monotone convergent and guarantees obtaining at convergence a stationary point of RGCCA. In some cases, the solution of RGCCA is the first eigenvalue/eigenvector of a certain matrix. For the scheme functions x, , or and shrinkage constants 0 or 1, many multiblock component methods are recovered.
机译:呈现了序列多块组件方法的新框架。 该框架依赖于新版本的正则化广义规范相关分析(RGCCA),其中考虑了各种方案功能和收缩常数。 考虑两种块连接之间的两种类型:块完全连接或连接到超块(所有块的串联)。 所提出的迭代算法是单调聚的,保证在RGCCA的静止点处获得收敛。 在某些情况下,RGCCA的溶液是一定基质的第一特征值/特征向量。 对于方案函数x,或和收缩常量0或1,恢复许多多块组件方法。

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