matchFeat - One-to-One Feature Matching
Statistical methods to match feature vectors between
multiple datasets in a one-to-one fashion. Given a fixed number
of classes/distributions, for each unit, exactly one vector of
each class is observed without label. The goal is to label the
feature vectors using each label exactly once so to produce the
best match across datasets, e.g. by minimizing the variability
within classes. Statistical solutions based on empirical loss
functions and probabilistic modeling are provided. The 'Gurobi'
software and its 'R' interface package are required for one of
the package functions (match.2x()) and can be obtained at
<https://www.gurobi.com/> (free academic license). For more
details, refer to Degras (2022)
<doi:10.1080/10618600.2022.2074429> "Scalable feature matching
for large data collections" and Bandelt, Maas, and Spieksma
(2004) <doi:10.1057/palgrave.jors.2601723> "Local search
heuristics for multi-index assignment problems with
decomposable costs".