截断1-范数稀疏典型相关分析及其在脑成像遗传学中的应用。

Lei Du, Tuo Zhang, Kefei Liu, Xiaohui Yao, Jingwen Yan, Shannon L Risacher, Lei Guo, Andrew J Saykin, Li Shen
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引用次数: 7

摘要

发现遗传标记与神经成像数量性状之间的多变量关联是脑成像遗传学的主要任务。稀疏典型相关分析(SCCA)因其在识别双多元关系和特征选择方面的强大能力而成为该领域的一种流行技术。现有的SCCA方法要么施加l1范数,要么施加它的变体。l0 -范数是更理想的,但由于l0 -范数最小化是np困难的,因此仍未被探索。在本文中,我们施加截断的1-范数来提高基于1-范数的SCCA方法的性能。此外,我们还提出了两种高效的优化算法,并证明了它们的收敛性。实验结果表明,与两种基准方法相比,该方法在模拟和真实成像遗传分析中都能更好地识别出有意义的典型加载模式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Sparse Canonical Correlation Analysis via Truncated <i>ℓ</i><sub>1</sub>-norm with Application to Brain Imaging Genetics.

Sparse Canonical Correlation Analysis via Truncated <i>ℓ</i><sub>1</sub>-norm with Application to Brain Imaging Genetics.

Sparse Canonical Correlation Analysis via Truncated 1-norm with Application to Brain Imaging Genetics.

Discovering bi-multivariate associations between genetic markers and neuroimaging quantitative traits is a major task in brain imaging genetics. Sparse Canonical Correlation Analysis (SCCA) is a popular technique in this area for its powerful capability in identifying bi-multivariate relationships coupled with feature selection. The existing SCCA methods impose either the 1-norm or its variants. The 0-norm is more desirable, which however remains unexplored since the 0-norm minimization is NP-hard. In this paper, we impose the truncated 1-norm to improve the performance of the 1-norm based SCCA methods. Besides, we propose two efficient optimization algorithms and prove their convergence. The experimental results, compared with two benchmark methods, show that our method identifies better and meaningful canonical loading patterns in both simulated and real imaging genetic analyse.

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