Knowledge Transfer across Multiple Principal Component Analysis Studies
Zeyu Li, Kangxiang Qin, Yong He, Wang Zhou, Xinsheng Zhang

TL;DR
This paper introduces a novel transfer learning method for PCA that leverages multiple source studies to improve target estimation, using Grassmannian barycenter and eigenvalue gap analysis for robustness and efficiency.
Contribution
It proposes a two-step transfer learning algorithm for PCA across multiple studies, including a Grassmannian barycenter approach and dataset selection, with theoretical guarantees and practical validation.
Findings
Enhanced estimation accuracy for target PCA using multiple sources.
Robustness and computational efficiency of the Grassmannian barycenter method.
Successful application to activity recognition data.
Abstract
Transfer learning has aroused great interest in the statistical community. In this article, we focus on knowledge transfer for unsupervised learning tasks in contrast to the supervised learning tasks in the literature. Given the transferable source populations, we propose a two-step transfer learning algorithm to extract useful information from multiple source principal component analysis (PCA) studies, thereby enhancing estimation accuracy for the target PCA task. In the first step, we integrate the shared subspace information across multiple studies by a proposed method named as Grassmannian barycenter, instead of directly performing PCA on the pooled dataset. The proposed Grassmannian barycenter method enjoys robustness and computational advantages in more general cases. Then the resulting estimator for the shared subspace from the first step is further utilized to estimate the…
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Taxonomy
TopicsSpectroscopy and Chemometric Analyses
MethodsSparse Evolutionary Training · Focus · Principal Components Analysis
