Lin Zhenhua, Wang Liangliang, Cao Jiguo
Department of Statistical Sciences, University of Toronto, Toronto, Ontario, M5S 3G3, Canada.
Department of Statistics and Actuarial Science, Simon Fraser University, Burnaby, British Columbia, V5A 1S6, Canada.
Biometrics. 2016 Sep;72(3):846-54. doi: 10.1111/biom.12457. Epub 2015 Dec 18.
Functional principal component analysis (FPCA) is a popular approach to explore major sources of variation in a sample of random curves. These major sources of variation are represented by functional principal components (FPCs). The intervals where the values of FPCs are significant are interpreted as where sample curves have major variations. However, these intervals are often hard for naïve users to identify, because of the vague definition of "significant values". In this article, we develop a novel penalty-based method to derive FPCs that are only nonzero precisely in the intervals where the values of FPCs are significant, whence the derived FPCs possess better interpretability than the FPCs derived from existing methods. To compute the proposed FPCs, we devise an efficient algorithm based on projection deflation techniques. We show that the proposed interpretable FPCs are strongly consistent and asymptotically normal under mild conditions. Simulation studies confirm that with a competitive performance in explaining variations of sample curves, the proposed FPCs are more interpretable than the traditional counterparts. This advantage is demonstrated by analyzing two real datasets, namely, electroencephalography data and Canadian weather data.
功能主成分分析(FPCA)是一种探索随机曲线样本中主要变异来源的常用方法。这些主要变异来源由功能主成分(FPC)表示。FPC值显著的区间被解释为样本曲线具有主要变异的区间。然而,由于“显著值”的定义模糊,这些区间对于普通用户来说往往很难识别。在本文中,我们开发了一种基于惩罚的新方法来推导FPC,使其仅在FPC值显著的区间内精确地非零,因此,所推导的FPC比现有方法推导的FPC具有更好的可解释性。为了计算所提出的FPC,我们设计了一种基于投影消元技术的高效算法。我们表明,在温和条件下,所提出的可解释FPC是强一致的且渐近正态的。模拟研究证实,在所提出的FPC在解释样本曲线变异方面具有竞争力的情况下,它比传统的FPC更具可解释性。通过分析两个真实数据集,即脑电图数据和加拿大天气数据,证明了这一优势。