AI RESEARCH
Cellwise and Casewise Robust Covariance in High Dimensions
arXiv CS.LG
•
ArXi:2505.19925v2 Announce Type: replace-cross The sample covariance matrix is a cornerstone of multivariate statistics, but it is highly sensitive to outliers. These can be casewise outliers, such as cases belonging to a different population, or cellwise outliers, which are deviating cells (entries) of the data matrix. Recently some robust covariance estimators have been developed that can handle both types of outliers, but their computation is only feasible up to at most 20 dimensions.