HNPclassifier - Hierarchical Neyman-Pearson Classification for Ordered Classes
The Hierarchical Neyman-Pearson (H-NP) classification
framework extends the Neyman-Pearson classification paradigm to
multi-class settings where classes have a natural priority
ordering. This is particularly useful for classification in
unbalanced dataset, for example, disease severity
classification, where under-classification errors
(misclassifying patients into less severe categories) are more
consequential than other misclassifications. The package
implements H-NP umbrella algorithms that controls
under-classification errors under user specified control levels
with high probability. It supports the creation of H-NP
classifiers using scoring functions based on built-in
classification methods (including logistic regression, support
vector machines, and random forests), as well as user-trained
scoring functions. For theoretical details, please refer to
Lijia Wang, Y. X. Rachel Wang, Jingyi Jessica Li & Xin Tong
(2024) <doi:10.1080/01621459.2023.2270657>.