ROBOUT: a conditional outlier detection methodology for high-dimensional data
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Publication:6579431
DOI10.1007/s00362-023-01492-3zbMATH Open1541.62169MaRDI QIDQ6579431
Angelos T. Vouldis, Matteo Farnè
Publication date: 25 July 2024
Published in: Statistical Papers (Search for Journal in Brave)
Ridge regression; shrinkage estimators (Lasso) (62J07) Robustness and adaptive procedures (parametric inference) (62F35)
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