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Debiased distributed PCA under high dimensional spiked model

Debiased distributed PCA under high dimensional spiked model

来源:Arxiv_logoArxiv
英文摘要

We study distributed principal component analysis (PCA) in high-dimensional settings under the spiked model. In such regimes, sample eigenvectors can deviate significantly from population ones, introducing a persistent bias. Existing distributed PCA methods are sensitive to this bias, particularly when the number of machines is small. Their consistency typically relies on the number of machines tending to infinity. We propose a debiased distributed PCA algorithm that corrects the local bias before aggregation and incorporates a sparsity-detection step to adaptively handle sparse and non-sparse eigenvectors. Theoretically, we establish the consistency of our estimator under much weaker conditions compared to existing literature. In particular, our approach does not require symmetric innovations and only assumes a finite sixth moment. Furthermore, our method generally achieves smaller estimation error, especially when the number of machines is small. Empirically, extensive simulations and real data experiments demonstrate that our method consistently outperforms existing distributed PCA approaches. The advantage is especially prominent when the leading eigenvectors are sparse or the number of machines is limited. Our method and theoretical analysis are also applicable to the sample correlation matrix.

Weiming Li、Zeng Li、Siyu Wang、Yanqing Yin、Junpeng Zhu

数学

Weiming Li,Zeng Li,Siyu Wang,Yanqing Yin,Junpeng Zhu.Debiased distributed PCA under high dimensional spiked model[EB/OL].(2025-05-28)[2025-06-07].https://arxiv.org/abs/2505.22015.点此复制

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