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首页> 外文期刊>IEEE Transactions on Knowledge and Data Engineering >Learning Sparse PCA with Stabilized ADMM Method on Stiefel Manifold
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Learning Sparse PCA with Stabilized ADMM Method on Stiefel Manifold

机译:在Stiefel歧管上使用稳定的ADMM方法学习稀疏PCA

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Sparse principal component analysis (SPCA) produces principal components with sparse loadings, which is very important for handling data with many irrelevant features and also critical to interpret the results. To deal with orthogonal constraints, most previous approaches address SPCA with several components using techniques such as deflation technique and convex relaxations. However, the deflation technique usually suffers from suboptimal solutions due to poor approximations. On the other hand, the convex relaxations are often computationally expensive. To address the above issues, in this paper, we propose to address SPCA over the Stiefel manifold directly, and develop a stabilized Alternating Direction Method of Multipliers (SADMM) to handle the nonconvex orthogonal constraints. Compared to traditional ADMM, the proposed SADMM method converges well with a wide range of parameters and obtains a better solution. We also theoretically study the convergence property of the proposed SADMM method. Furthermore, most existing methods ignore an inherent drawback of SPCA - the importance of different components is not considered when doing feature selection, which often makes the selected features nonoptimal. To address this, we further propose a two-stage method which considers the importance of different components to select the most important features. Empirical studies on both synthetic and real-world datasets show that the proposed algorithms achieve better performance compared to existing state-of-the-art methods.
机译:稀疏的主成分分析(SPCA)产生具有稀疏负载的主要组件,对于处理具有许多无关的功能的数据非常重要,也非常重要,以解释结果。为了处理正交约束,最先前的方法使用诸如通气技术等技术和凸松弛的技术使用多个组件进行地址SPCA。然而,由于近似差,通货紧缩技术通常遭受次优溶液。另一方面,凸起放松通常是计算昂贵的。为了解决上述问题,在本文中,我们建议直接在STIefel歧管上遍及SPCA,并开发乘法器(SADMM)的稳定交替方向方法,以处理非凸显正交约束。与传统的ADMM相比,所提出的SADMM方法通过各种参数收敛良好,并获得更好的解决方案。我们也从理论上研究了所提出的SADMM方法的收敛性。此外,大多数现有方法忽略SPCA的固有缺点 - 在进行功能选择时不考虑不同组件的重要性,这通常会使所选功能非优化。为了解决这个问题,我们进一步提出了一种两级方法,它考虑了不同组件选择最重要的功能。合成和现实世界数据集的实证研究表明,与现有的最先进的方法相比,所提出的算法实现了更好的性能。

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