mantar - Missingness Alleviation for Network Analysis
Provides functionality for estimating cross-sectional
network structures representing partial correlations while
accounting for missing data. Networks are estimated via
neighborhood selection or regularization, with model selection
guided by information criteria. Missing data can be handled
primarily via multiple imputation or a maximum likelihood-based
approach, as demonstrated by Nehler and Schultze (2025)
<doi:10.1080/00273171.2025.2503833> and Nehler and Schultze
(2026) <doi:10.1037/met0000828>. Deletion-based approaches are
also available but play a secondary role.