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Sparse functional principal component analysis in a new regression framework

机译:新回归框架中稀疏的功能主成分分析

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The functional principal component analysis is widely used 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 FPCs from the conventional FPCA method are often nonzero in the whole domain, and are hard to interpret in practice. The main focus is to estimate functional principal components (FPCs), which are only nonzero in subregions and are referred to as sparse FPCs. These sparse FPCs not only represent the major variation sources but also can be used to identify the subregions where those major variations exist. The current methods obtain sparse FPCs by adding a penalty term on the length of nonzero regions of FPCs in the conventional eigendecomposition framework. However, these methods become an NP-hard optimization problem. To overcome this issue, a novel regression framework is proposed to estimate FPCs and the corresponding optimization is not NP-hard. The FPCs estimated using the proposed sparse FPCA method is shown to be equivalent to the FPCs using the conventional FPCA method when the sparsity parameter is zero. Simulation studies illustrate that the proposed sparse FPCA method can provide more accurate estimates for FPCs than other available methods when those FPCs are only nonzero in subregions. The proposed method is demonstrated by exploring the major variations among the acceleration rate curves of 107 diesel trucks, where the nonzero regions of the estimated sparse FPCs are found well separated. (C) 2020 Elsevier B.V. All rights reserved.
机译:功能性主成分分析广泛用于探索随机曲线样本中的主要变化源。这些主要的变化来源由功能性主成分(FPC)表示。来自传统FPCA方法的FPC在整个领域中通常是非零,并且很难在实践中解释。主要焦点是估计仅在子区域中仅为非零的功能主组件(FPC),并且被称为稀疏FPC。这些稀疏的FPC不仅代表主要变体源,而且还可用于识别存在这些主要变化的子区域。目前的方法通过在传统的EIGENDECOPHION框架中添加FPC的非零区域的长度来获得稀疏的FPC。但是,这些方法成为NP-Hard优化问题。为了克服这个问题,提出了一种新的回归框架来估计FPC,并且相应的优化不是NP-HARD。使用所提出的稀疏FPCA方法估计的FPC将相当于当稀疏参数为零时使用传统的FPCA方法等同于FPC。仿真研究说明,当那些FPC仅在子区域中的非零时,所提出的稀疏FPCA方法可以为FPC提供比其他可用方法更准确的估计。通过探索107个柴油卡车的加速度曲线之间的主要变化来证明所提出的方法,其中估计稀疏FPC的非零区域被发现很好地分开。 (c)2020 Elsevier B.V.保留所有权利。

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