Filtrated common functional principal component analysis of multigroup functional data

Shuhao Jiao, Ron Frostig, H. Ombao
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Abstract

Local field potentials (LFPs) are signals that measure electrical activities in localized cortical regions and are collected from multiple tetrodes implanted across a patch on the surface of cortex. Hence, they can be treated as multigroup functional data, where the trajectories collected across temporal epochs from one tetrode are viewed as a group of functions. In many cases multitetrode LFP trajectories contain both global variation patterns (which are shared by most groups, due to signal synchrony) and idiosyncratic variation patterns (common only to a small subset of groups), and such structure is very informative to the data mechanism. Therefore, one goal in this paper is to develop an efficient algorithm that is able to capture and quantify both global and idiosyncratic features. We develop the novel filtrated common functional principal components (filt-fPCA) method, which is a novel forest-structured fPCA for multigroup functional data. A major advantage of the proposed filt-fPCA method is its ability to extract the common components in a flexible “multiresolution” manner. The proposed approach is highly data-driven, and no prior knowledge of “ground-truth” data structure is needed, making it suitable for analyzing complex multigroup functional data. In addition, the filt-fPCA method is able to produce parsimonious, interpretable, and efficient functional reconstruction (low reconstruction error) for multigroup functional data with orthonormal basis functions. Here the proposed filt-fPCA method is employed to study the impact of a shock (induced stroke) on the synchrony structure of rat brain. The proposed filt-fPCA is general and inclusive that can be readily applied to analyze any multigroup functional data, such as multivariate functional data, spatial-temporal data, and longitudinal functional data.
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对多组函数数据进行过滤式通用函数主成分分析
局部场电位(LFPs)是测量局部皮层区域电活动的信号,由植入皮层表面一块区域的多个四极杆收集。因此,它们可被视为多组功能数据,其中从一个四极杆收集到的跨时序轨迹被视为一组功能。在许多情况下,多电极 LFP 轨迹既包含全局变异模式(由于信号同步,大多数组共享),也包含特异变异模式(仅一小部分组共享),这种结构对数据机制非常有参考价值。因此,本文的目标之一是开发一种高效算法,能够捕捉并量化全局特征和特异特征。我们开发了新颖的 filtrated common functional principal components (filt-fPCA)方法,这是一种适用于多组功能数据的新颖森林结构 fPCA。所提出的 filt-fPCA 方法的主要优势在于它能够以灵活的 "多分辨率 "方式提取共同成分。该方法高度以数据为导向,无需事先了解 "真实 "数据结构,因此适用于分析复杂的多组函数数据。此外,对于具有正交基函数的多组函数数据,filt-fPCA 方法能够生成简明、可解释和高效的函数重构(重构误差低)。本文采用所提出的 filt-fPCA 方法来研究冲击(诱导性中风)对大鼠大脑同步结构的影响。所提出的 filt-fPCA 方法具有通用性和包容性,可用于分析任何多组功能数据,如多元功能数据、时空数据和纵向功能数据。
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