Cellwise robust and sparse principal component analysis
A first proposal of a sparse and cellwise robust PCA method is presented. Robustness to single outlying cells in the data matrix is achieved by substituting the squared loss function for the approximation error by a robust version. The integration of a sparsity-inducing $L_1$ or elastic net penalty...
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Zusammenfassung: | A first proposal of a sparse and cellwise robust PCA method is presented.
Robustness to single outlying cells in the data matrix is achieved by
substituting the squared loss function for the approximation error by a robust
version. The integration of a sparsity-inducing $L_1$ or elastic net penalty
offers additional modeling flexibility. For the resulting challenging
optimization problem, an algorithm based on Riemannian stochastic gradient
descent is developed, with the advantage of being scalable to high-dimensional
data, both in terms of many variables as well as observations. The resulting
method is called SCRAMBLE (Sparse Cellwise Robust Algorithm for Manifold-based
Learning and Estimation). Simulations reveal the superiority of this approach
in comparison to established methods, both in the casewise and cellwise
robustness paradigms. Two applications from the field of tribology underline
the advantages of a cellwise robust and sparse PCA method. |
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DOI: | 10.48550/arxiv.2408.15612 |