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Binary- and Multi-class Group Sparse Canonical Correlation Analysis for Feature Extraction and Classification

机译:用于特征提取和分类的二元和多类组稀疏典范相关分析

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摘要

This paper incorporates the group sparse representation into the well-known canonical correlation analysis (CCA) framework and proposes a novel discriminant feature extraction technique named group sparse canonical correlation analysis (GSCCA). GSCCA uses two sets of variables and aims at preserving the group sparse (GS) characteristics of data within each set in addition to maximize the global interset covariance. With GS weights computed prior to feature extraction, the locality, sparsity and discriminant information of data can be adaptively determined. The GS weights are obtained from an NP-hard group-sparsity promoting problem that considers all highly correlated data within a group. By defining one of the two variable sets as the class label matrix, GSCCA is effectively extended to multiclass scenarios. Then GSCCA is theoretically formulated as a least-squares problem as CCA does. Comparative analysis between this work and the related studies demonstrate that our algorithm is more general exhibiting attractive properties. The projection matrix of GSCCA is analytically solved by applying eigen-decomposition and trace ratio (TR) optimization. Extensive benchmark simulations are conducted to examine GSCCA. Results show that our approach delivers promising results, compared with other related algorithms.
机译:本文将群稀疏表示法引入到众所周知的规范相关分析(CCA)框架中,并提出了一种新的区分特征提取技术,即群稀疏规范相关分析(GSCCA)。 GSCCA使用两组变量,旨在保留每组数据的组稀疏(GS)特性,以使全局组间协方差最大化。通过在特征提取之前计算出GS权重,可以自适应地确定数据的局部性,稀疏性和判别信息。 GS权重是从NP硬组稀疏性促进问题获得的,该问题考虑了组内所有高度相关的数据。通过将两个变量集之一定义为类标签矩阵,GSCCA有效地扩展到多类方案。然后,理论上将GSCCA公式化为CCA的最小二乘问题。这项工作和相关研究之间的比较分析表明,我们的算法具有更广泛的吸引力。 GSCCA的投影矩阵通过应用特征分解和迹线比率(TR)优化来解析求解。进行了广泛的基准仿真以检查GSCCA。结果表明,与其他相关算法相比,我们的方法可提供令人鼓舞的结果。

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