Multiway data are becoming more and more common. While there are many approaches to extending principal component analysis (PCA) from usual data matrices to multiway arrays, their conceptual differences from the usual PCA, and the methodological implications of such differences remain largely unknown. This work aims to specifically address these questions. In particular, we clarify the subtle difference between PCA and singular value decomposition (SVD) for multiway data, and show that multiway principal components (PCs) can be estimated reliably in absence of the eigengaps required by the usual PCA, and in general much more efficiently than the usual PCs. Furthermore, the sample multiway PCs are asymptotically independent and hence allow for separate and more accurate inferences about the population PCs. The practical merits of multiway PCA are further demonstrated through numerical, both simulated and real data, examples.
翻译:虽然有许多方法将主要部件分析从通常的数据矩阵扩大到多路阵列,但它们与通常的五氯苯甲醚的概念差异,以及这些差异对方法的影响仍然基本上不为人所知,这项工作旨在具体解决这些问题,特别是澄清多路数据中五氯苯甲醚和单值分解(SVD)之间的细微差别,并表明如果没有通常的五氯苯甲醚所要求的微分,多路主要部件(PCs)可以可靠地估算,而且一般来说比通常的PCp效率要高得多。此外,抽样的多道PCs在概念上并不独立,因此能够对人群PCs进行单独和更准确的推论。多路五氯苯的实际优点通过数字、模拟和真实数据等实例得到进一步证明。