Journal of Data Science,
Statistics, and Visualisation

Graphical tools for visualizing cellwise and casewise outliers

Authors

DOI:

https://doi.org/10.52933/jdssv.v5i10.165

Keywords:

Anomaly detection, dimension reduction, graphics, principal component analysis, Silhouette plot.

Abstract

Principal component analysis (PCA) and other dimension reduction methods can be affected by cellwise and casewise outliers. Several approaches have been proposed that downweight outlying cells or cases to ensure a more reliable fitting process. The outputs of these robust methods can be used to detect anomalies by means of graphical displays. Our focus is on new visualizations of deviations from a PCA fit that is robust to both cellwise and casewise outliers, and that provides imputed values. The graphics are illustrated on several real datasets, including video data. The visualizations are implemented in a Shiny app.

Author Biographies

Mehdi Hirari, KU Leuven

Section of Statistics and Data Science
Department of Mathematics, KU Leuven
Celestijnenlaan 200B
BE-3001 Leuven, Belgium

Mia Hubert, KU Leuven

Section of Statistics and Data Science
Department of Mathematics, KU Leuven
Celestijnenlaan 200B
BE-3001 Leuven, Belgium

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Published

2025-12-30

How to Cite

Hirari, M., Hubert, M., & Rousseeuw, P. (2025). Graphical tools for visualizing cellwise and casewise outliers. Journal of Data Science, Statistics, and Visualisation, 5(10). https://doi.org/10.52933/jdssv.v5i10.165
Journal of Data Science,
Statistics, and Visualisation
Pages