Jan. 1, 2024, midnight | Naichen Shi, Raed Al Kontar

JMLR www.jmlr.org

In this paper, we tackle a significant challenge in PCA: heterogeneity. When data are collected from different sources with heterogeneous trends while still sharing some congruency, it is critical to extract shared knowledge while retaining the unique features of each source. To this end, we propose personalized PCA (PerPCA), which uses mutually orthogonal global and local principal components to encode both unique and shared features. We show that, under mild conditions, both unique and shared features can be identified and …

challenge data extract features knowledge paper personalized trends

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